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Redefining the Logic of Value Creation: A Global Perspective on Emerging Interaction Patterns between Customers and Companies DISSERTATION of the University of St.Gallen, School of Management, Economics, Law, Social Sciences and International Affairs, to obtain the title of Doctor of Philosophy in Management submitted by Tobias Schlager from Austria and Germany Approved on the application of Prof. Dr. Peter Maas and Prof. Dr. Andreas Herrmann Dissertation no. 4109 D-Druck Spescha, St.Gallen 2013 The University of St. Gallen, School of Management, Economics, Law, Social Sciences and International Affairs hereby consents to the printing of the present dissertation, without hereby expressing any opinion on the views herein expressed. St. Gallen, October 29, 2012 The President: Prof. Dr. Thomas Bieger tobi tobi To my dear parents / Meinen lieben Eltern Ines & Herbert Schlager Acknowledgements Although I hope that everybody who supported me while working on this thesis knows how important his/her assistance was for me, I would like drop some lines to express my sincere gratitude to a number of people that have particularly encouraged me. First of all, I would like to thank my family. Each of them have continuously inspired me from my first school day on until the last day as a student. Always believing in me and showing me that it is never, under no circumstances, worth to give up, I feel indebted to my mother everyday. Equally, my father has contributed to the success by showing me that being close to nature and that sometimes reducing things to the very basics is necessary to keep a clear head. I am still deeply impressed of his skiing skills, hoping to go riding together with him soon. My brother, who is a anaylsis-driven “mathemagician”, one of my best friends, has not only directly contributed to this thesis by discussing several sections, but also always had an open ear for my problems. I do not want to leave my grandparents unmentioned, who all cannot read this, but to whom I owe so much and who I regularly think of. With all my heart, I would like to thank my family. Besides my dear colleagues, co-authors, and students, I would like to express a special thanks to Christine Scheef, who I had the chance to discuss a lot of ideas with. She has always put my thesis above her problems. Without the discussions, some parts of the thesis would surely not have reached the present level. Thank you very much, Tine. Of course, I want to thank my supervisor, Prof. Dr. Peter Maas, for his support and guidance and for providing extraordinary working conditions at the Institute of Insurance Economics. Peter always encouraged me for my work and assisted whenever possible. I am also very grateful to my co-supervisor, Prof. Dr. Andreas Herrmann, for his interest in my dissertation and my skills and for providing me with excellent feedaback and creative ideas. After all, writing this thesis was a lot of fun and all my friends, especially those from Innsbruck, have contributed to this. St. Gallen, December, 2012 Tobias Schlager Vorwort Obwohl ich hoffe, dass jeder, der mir beim Verfassen dieser Dissertation geholfen hat, weiß, wie wichtig seine Unterstützung für mich war, möchte ich die Menschen noch einmal ausdrücklich erwähnen, die mich besonders motiviert haben. Zu allererst würde ich gerne meiner Familie danken. Jedes Familienmitglied hat mich auf seine Weise und zu jeder Zeit inspiriert, von meinem ersten Schultag an bis zu meinem letzten Tag als Student. Immer an mich glaubend und mir verdeutlichend, dass man nie aufgeben darf, war der grosse Mosaikstein, den meine Mutter gelegt hat. Gleichermassen hat mein Vater dazu beigetragen, indem er mich Naturverbundenheit gelehrt hat und das Verständnis, Dinge auf das Wesentliche reduzieren, um einen klaren Kopf zu bewahren. Ich bin immer noch begeistert von seinen Skikünsten und hoffe, bald mit ihm fahren zu können. Mein Bruder, ein stets analysierender “Mathemagician” und einer meiner besten Freunde, hat nicht nur direkt Abschnitte dieser Dissertation mit mir besprochen, er hatte auch immer ein offenes Ohr für alle meine Probleme. Meine Grosseltern, die diese Zeilen leider nicht mehr lesen können, sind an dieser Stelle nicht zu vergessen. Ich verdanke auch ihnen sehr viel und denke oft an sie. Von ganzem Herzen ein aufrichtiges Dankeschön an meine gesamte Familie. Neben meinen werten Kollegen, Co-Autoren und Studenten möchte ich meinen besonderen Dank an Christine Scheef ausdrücken, mit der ich viele Ideen diskutieren konnte. Sie hat meine Dissertation immer über ihre eigenen Probleme gestellt. Ohne unsere intensiven Diskussionen wären Teile meiner Arbeit nicht annähernd auf dem derzeitigen Level. Vielen Dank, Tine. Natürlich möchte ich auch meinem Betreuer, Prof. Dr. Peter Maas, für die hervorragende Unterstützung und für die tollen Arbeitsbedingungen am Institut für Versicherungswirtschaft danken. Meinem Zweitbetreuer, Prof. Dr. Andreas Herrmann, bin ich für das Interesse an meiner Dissertation, das Vertrauen in meine Fähigkeiten und für das exzellente Feedback sehr dankbar. Abschliessend möchte ich noch erwähnen, dass mir das Schreiben der Dissertation eine Menge Spass gemacht hat und alle meine Freunde - insbesondere jene aus Innsbruck - dazu beigetragen haben. St. Gallen, Dezember, 2012 Tobias Schlager iv Contents Contents Contents List of Figures iv viii List of Tables ix Summary / Zusammenfassung x I Introduction 1 1 Research perspective 1 2 Theoretical framing 2 3 Practical relevance 4 4 Objectives 5 5 Summary and publication progress 9 BIBLIOGRAPHY 11 II Reframing Customer Value from a Dominant Logics Perspective 13 1 Introduction 14 2 The dominant logics and value concepts 17 3 Customer value’s nature 3.1 Phenomenological and experiential facet . . . . . . . . . . . . . 3.2 Context-specific facet . . . . . . . . . . . . . . . . . . . . . . . 3.3 Experience-based facet . . . . . . . . . . . . . . . . . . . . . . 20 20 22 23 4 Customer value creation 4.1 Interaction . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 4.2 Integration . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 24 25 26 C ONTENT v 4.3 4.4 27 28 Focus on relationships . . . . . . . . . . . . . . . . . . . . . . Holistic marketing processes . . . . . . . . . . . . . . . . . . . 5 A framework for customer value 31 6 Discussion 32 7 Theoretical and managerial implications 34 8 Future research 36 BIBLIOGRAPHY 40 III The Influence of the Employer Brand on Employee Attitudes Relevant for Service Branding: An Empirical Investigation 52 1 Introduction 53 2 Conceptual development 54 3 Hypotheses development 3.1 Economic value . . . 3.2 Development value . 3.3 Social value . . . . . 3.4 Diversity value . . . 3.5 Reputation value . . 4 Empirical study 64 5 Research findings 5.1 Current employees . . . . . . . . . . . . . . . . . . . . . . . . 5.2 Potential employees . . . . . . . . . . . . . . . . . . . . . . . . 66 68 71 6 Limitations/future research/discussion 72 7 Theoretical and managerial implications 7.1 Retain and align current employees . . . . . . . . . . . . . . . . 7.2 Attract potential employees . . . . . . . . . . . . . . . . . . . . 73 74 75 . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 58 59 60 61 62 63 vi 8 Contents Conclusion 76 BIBLIOGRAPHY 77 IV Accessing the Biggest Piece of the Pie: International Segmentation with Emerging Markets 89 1 Introduction 91 2 Prior literature on EMs and segmentation 2.1 Conceptual approaches . . . . . . . . . . . . . . . . . . . . . . 2.2 Empirical studies . . . . . . . . . . . . . . . . . . . . . . . . . 93 93 94 3 Why should EMs be different for segmentation? 3.1 Contextual embeddedness . . . . . . . . . . . . . . . . . . . . 3.2 Within-country heterogeneity . . . . . . . . . . . . . . . . . . . 95 95 96 4 The requirements of EMs segmentation 4.1 Micro-level analysis . . . . . . . . . . 4.2 Selection of relevant respondents . . . 4.3 Segmentation variables and covariates 4.4 Holistic approach . . . . . . . . . . . 4.5 Data considerations . . . . . . . . . . 5 Model formulation and segmentation basis 109 5.1 Consumer channel behavior as the segmentation basis . . . . . . 109 5.2 Basic model . . . . . . . . . . . . . . . . . . . . . . . . . . . . 109 6 Numerical application 112 6.1 Data collection and analysis . . . . . . . . . . . . . . . . . . . 112 6.2 Results . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 114 7 Discussion and implications 120 7.1 Practical implications . . . . . . . . . . . . . . . . . . . . . . . 124 7.2 Future research . . . . . . . . . . . . . . . . . . . . . . . . . . 125 . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 98 . 98 . 99 . 100 . 103 . 104 Appendix A Descriptive statistics 127 Appendix B Geographical and class-specific classification schemes 128 C ONTENT vii BIBLIOGRAPHY 129 V Nobody said Leaving was Easy: Biased Consumer Behavior in Research Shopping 140 1 Introduction 141 2 Conceptual model development 143 2.1 Decision-making towards research shopping . . . . . . . . . . . 143 2.2 Decision-making from a status quo bias perspective . . . . . . . 144 3 Hypotheses development 145 3.1 Biased purchase behavior . . . . . . . . . . . . . . . . . . . . . 145 3.2 Biased perceptions of channels for purchasing . . . . . . . . . . 149 4 Analysis and findings of Study 1 and Study 2 4.1 Study 1: Method . . . . . . . . . . . . . 4.2 Study 1: Analysis . . . . . . . . . . . . . 4.3 Study 2: Method . . . . . . . . . . . . . 4.4 Study 2: Analysis . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 152 153 154 162 163 5 Discussion 168 6 Managerial implications 170 7 Limitations and future research 172 Appendix A Confirmatory factor analysis 175 Appendix B Graphical abstract 176 BIBLIOGRAPHY 177 Curriculum Vitæ 186 viii List of Figures List of Figures Introduction 1 2 The Dissertation’s Focus on the Customer. . . . . . . . . . . . . Localization of this Dissertation. . . . . . . . . . . . . . . . . . 1 4 8 Reframing Customer Value from a Dominant Logics Perspective 13 3 4 5 The Structure of the Article. . . . . . . . . . . . . . . . . . . . The Changing Nature of Customer Value. . . . . . . . . . . . . A Framework for Customer Value from a Dominant Logics Perspective. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 17 20 32 The Influence of the Employer Brand on Employee Attitudes Relevant for Service Branding: An Empirical Investigation 52 6 7 The Perceived Employer Brand and Service Branding. . . . . . Relationships between Employer Attractiveness and Employee Response. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 58 70 Accessing the Biggest Piece of the Pie: International Segmentation with Emerging Markets 89 8 9 The Influence of (a) Psychographic and (b) Sociodemographic Variables on Consumer Segment Distribution. . . . . . . . . . . 121 The Influence of Higher-level Covariates on Higher-level Segment Distribution. . . . . . . . . . . . . . . . . . . . . . . . . . . . 122 Nobody said Leaving was Easy: Biased Consumer Behavior in Research Shopping 140 10 11 12 Conceptual Model to Research Shopping. . . . . . . . . . . . . 145 The Central Hypotheses concerning the Effects of the Status Quo Bias Theory on Research Shopping. . . . . . . . . . . . . . . . 152 The Probabilities of Research Shopping for Multi- and Singlechannel Search Behavior, and their difference. . . . . . . . . . . 161 C ONTENT ix List of Tables Introduction 1 Reframing Customer Value from a Dominant Logics Perspective 13 The Influence of the Employer Brand on Employee Attitudes Relevant for Service Branding: An Empirical Investigation 52 1 2 Summary of Confirmatory Factor Analysis and Reliability Estimates of Measurement Scales. . . . . . . . . . . . . . . . . . . Results of Hypotheses Testing. . . . . . . . . . . . . . . . . . . 67 69 Accessing the Biggest Piece of the Pie: International Segmentation with Emerging Markets 89 3 4 5 6 The Changing Requirements of an International Segmentation that Includes EMs. . . . . . . . . . . . . . . . . . . . . . . . . Results of Class-Specific Model: Higher-level segments. . . . . Model Results for Consumer and Higher-Level Segments. . . . Consumer Segment Distribution for Each Higher-Level Segment. 108 115 118 119 Nobody said Leaving was Easy: Biased Consumer Behavior in Research Shopping 140 7 8 9 10 11 Variance Inflation Factors and Pearson Correlations. . . . . . . . Results of the Binary Logistic Random-Intercepts Regression. . Manipulation of Satisfaction with the Channel. . . . . . . . . . Means of Satisfaction Depending on the Specific Manipulation. . Results of Mediation Testing. . . . . . . . . . . . . . . . . . . . 156 160 162 164 166 x Summary Dynamic interactions are a central part of today’s understanding of marketing. Therein, the idea that interactions themselves constitute a potential source of value for the customer becomes increasingly accepted. This dissertation critically reflects upon recent ideas on various types of interactions with the customer in the spotlight of considerations. The objectives are two-pronged: First, the customer’s role as potentially proactive initiator is underscored which dissociates from the traditional, company-focused point of view. Second, the importance of customer interactions as decisive value driver is underlined. In order to achieve this, the dissertation is structured in five parts: Part I introduces the topic areas of the dissertation and outlines its overall objectives. Guiding the subsequent parts, Part II deepens the theoretical perspective by means of a conceptual discussion about how recently emerged logics reshape the understanding of customer value. Part III conceptually addresses and empirically validates the implications of Part II on service branding. The two final parts, Part IV and V, implicitly pursue the dominant logics’ notions by relating to a research area specifically focused on interactions: Multichannel research. S UMMARY / Z USAMMENFASSUNG xi Zusammenfassung Dynamische Interaktionen stellen einen zentralen Bestandteil für das heutige Verständnis von Marketing dar. Die Idee, dass Interaktionen an sich bereits einen Wert für den Kunden darstellen, ist zunehmend akzeptiert. In der vorliegenden Dissertation werden jüngste Entwicklungen bezüglich verschiedener Arten von Interaktionen mit einem Fokus auf den Kunden kritisch reflektiert. Folglich sind die Ziele zweigeteilt: Zum einen wird der Kunde als potenziell proaktiver Initiator von Interaktionen verstanden, wodurch ein distanzierter Standpunkt gegenüber der klassischen, unternehmensorientierten Perspektive eingenommen wird. Zum anderen wird die Wichtigkeit von Kundeninteraktionen als entscheidender Werttreiber hervorgehoben. Um dies zu erreichen, ist die Dissertation wie folgt strukturiert. Teil I dient der Einführung in die Themenbereiche der Dissertation und verdeutlicht deren konkrete Ziele. Teil II vertieft die theoretische Perspektive anhand einer konzeptionellen Aufarbeitung der Bedeutung von dominanten Logiken für Customer Value. In Teil III wird dies aufgegriffen und ein konzeptionelles Framework für Service Branding entwickelt, welches empirisch getestet wird. In den beiden letzten Teile, Teil IV und V, werden die theoretischen Grundgedanken der Logiken implizit verfolgt, indem ein Forschungsbereich vertieft wird, der hauptsächlich auf Interaktionen basiert: die Multichannel- oder auch Interaktionswege-Forschung. asdf 1 I Introduction The following introduction outlines the research perspective that the author of this dissertation takes in and picks up current discussions in marketing literature related to interactions. Building on this, the theoretical underpinning, the practical relevance, and the objectives of the presented dissertation are briefly delineated. The main body of the dissertation unfolds in the Parts II to V, which pertain to individual articles that commonly emphasize the dynamic interactions that customers engage in. 1 Research perspective It is worthwhile taking a short excursus to the predominantly implicit assumptions that the presented dissertation makes since these, along with the theoretical sophistication of the studied phenomena, determine the selection of methodologies (Edmondson and McManus, 2007; Punch, 2005). While some paradigms, such as the postmodernistic research, are based on the assumption that the reality develops over time, the positivistic and the postpositivistic perspective assume that an objective reality exists (Rynes and Gephart, 2004). Thereby, the postpositivistic perspective presents an softer form of positivism. The latter paradigms seem to better fit the approaches and phenomena studied in this dissertation, i.e., interactions among various actors, since it is suggested that "we can objectively study market interactions while ourselves remaining distant from those interactions" (Deshpandé, 1983, p. 106). Further, most quantitative marketing articles implicitly select a (post-)positivistic perspective (Hanson and Grimmer, 2007; Hirschman, 1986) which directly relates to the approaches of this dissertation. This brief 2 I I NTRODUCTION elaboration on the research perspective shall guide the readers in understanding the author’s intentions and the presented ideas. 2 Theoretical framing Interactions between various stakeholders have attracted the spotlight of marketing scholars since the field’s nascent states. In this course, most efforts have been dedicated to interactions between companies and customers, which have recently regained attention by the emergence of the service dominant (S-D) logic. The logic was introduced in 2004 by the award-winning article "Evolving to a new dominant logic for marketing" of Stephen Vargo and Robert Lusch. Among other ideas, it accentuates a shift away from goods to service provision and lays a focus on the co-creation of value by the customer (Vargo and Lusch, 2006). By emphasizing the customer’s role as a co-creator the interactional facet of the S-D logic is explicated, arguing that customers and companies idiosyncratically create value through interactions (Vargo and Lusch, 2008). In the aftermath of this path-breaking article, marketing literature has continuously shifted, which is reflected by more than 100 published articles on the service-dominant logic, a multitude of them in marketing’s top-tiers. In a first attempt to project this perspective on customer value, Woodruff and Flint (2006) critically reflect the S-D logic’s notions. Doing so, they underline that value emerges in interactions between customers and companies. The Nordic School, represented by Bo Edvardsson and colleagues, has further advanced these ideas by introducing the customer dominant (C-D) logic (e.g., Edvardsson et al., 2011; Heinonen et al., 2010). Advocating that the S-D logic is company-focused, the C-D logic expresses the need for a rather exclusive focus on customers, their needs, desires, and previous experiences. Despite the scarcity of scientific work on the C-D logic and its thoughts, its ideas enhance literature in a way that underlines how this dissertation understands the division of roles between customers and 2 Theoretical framing 3 companies: Albeit customers and companies have balanced roles when interacting, the central focus is placed on the customer’s point of view. An area that is inherently connected with the ideas of interactions as source of value and the customer having a proactive role is the multichannel literature. The research stream deals with questions arising regarding the multitude of possibilities available to customers for interacting with companies. Implicitly referring to the roles of companies and customers described above, Neslin et al. (2006) conceptualize channels as "a customer contact point, or a medium through which the firm and the customer interact" (p. 96). The dissertation acknowledges this novel perspective and considers channels as more than one-way communication or distribution channels, but rather as an offer from companies to customers to interact (interaction point). Following this perspective, the power fades away from companies to consumers since it is rather the customer having the choice about how, when, and where to interact with whom. In particular, consumers can choose the interaction points that best reflect their specific needs, and therefore, interaction points represent a pivotal value driver of customer value (Montoya-Weiss et al., 2003). In line, customers are assigned a rather active role. Synthesizing both, the understanding that prevails in multichannel literature and the theoretical ideas of both service- and customer-dominant logics, the central theme of this dissertation can be framed: Interactions per se are drivers of the (idiosyncratically) determined customer value. Gaining further understanding of these is necessary for facilitating the creation of customer value through interactions. The above-mentioned focus on interactions forms the common basis for the research questions of the four articles presented in this dissertation. The central position of the customer is graphically illustrated in Figure 1. Around the customer, an exemplary set of actors with whom the customer may interact is sketched, illustrating the various interactions studied in this dissertation. 4 I I NTRODUCTION Figure 1: The Dissertation’s Focus on the Customer. 3 Practical relevance In fact, interactions have not solely been a key topic in the marketing literature in the past decade but also their practical relevance is paramount. How to interact with customers constitutes a central pillar of most companies’ strategy. Whereas companies such as Dell explicitly consider a specific type of interactions (online interactions) in their strategy, the question how the customers may best connect with the company is at least among the major topics of the agenda of other companies. On top of the relevance given by the Internet as interaction facilitator, recent technological advancements have further multiplied the challenges and opportunities for interacting with customers. Nowadays, mobile applications and smartphone-optimized websites are increasingly gaining importance when evaluating how to connect with customers. In Europe, for example, already 51 percent of the consumers dispose of smartphones while the number is even higher in the USA with 63 percent (TechCrunch, 2011). On a more general level, a study of Yahoo! Inc. and OMD (2006) shows that nearly two thirds of the consumers interact 4 Objectives 5 with multiple sources just for gathering information before making a purchase. These figures are backed by a cross-industry study of Google (2009) finding that only 40 to 60 percent of customers (depending on the industry) consult the same interaction point for searching and purchasing. What is more, radically different ways of interactions that consumers can engage in are created by new media. For instance, whereas traditionally word-of-mouth (WOM) represented an important way to gather information about a product, service or company, it is nowadays the e-word-of-mouth (eWOM). Coevally, the range of customers reached by positive or negative eWOM significantly exceeds the ones of traditional WOM, far beyond what was imaginable a decade ago. It is needless to say that the trend towards using the multitude of possibilities for interacting with companies is still continuing. Along with the technological developments and the simultaneously changing customer behavior it is imperative for marketing practitioners to rethink old-fashioned strategies and practices. 4 Objectives Acknowledging that marketing literature shifts towards a customer focus as well as the practical relevance of these topics, this dissertation aims to substantialize the knowledge concerning the complex and highly interactive context a consumer is embedded in. On a theoretical level, the role of the customer as proactive initiator of interactions and the notion of interactions constituting a source of value is emphasized. To grasp the far-reaching consequences of the customers’ new role, the present dissertation takes a multidisciplinary approach integrating perspectives from human resources, psychology, and management. Accordingly, Part II has the objective to shed light on the influence of dominant logics on the customer value concept, which has so far largely remained underinvestigated. Revisiting the creation of value, the part includes management literature. Related to this, the objective of the Parts III-V is to contribute to 6 I I NTRODUCTION specific topics from a dominant logics’ perspective. Particularly, Part III reflects the importance of the employer brand for service branding integrating human resources and marketing perspectives. To date the literature has neglected the importance of favorable employee perceptions and the creation of a service brand. The objective is to develop a profound understanding of the network of interactions, where especially the customer’s interactions with various actors (i.e., the company and the customer contact employee) are decisive. The last two parts deal with the consumers’ behavior when interacting with companies, or more precisely, consumer multichannel behavior. The first objective of both is to enhance literature regarding the consumers’ interactive behavior with companies in the sense of what Neslin et al. (2006) understand when referring to channels: Ways of interaction instead of solely one-way communication. Thus, both articles emphasize the consumers’ proactive role in interactions. While Part IV follows this notion by establishing an international consumer segmentation, which includes emerging markets, that founds on the so far largest variety of interaction points (several of which are consumer-initiated interactions), Part V does so by explicitly focusing on the consumers’ point of view throughout multiple phases of the buying process. Additionally, it is worthwhile to note that by adopting the status quo bias theory, the dissertation’s multidisciplinary perspective is reflected. Besides the strong theoretical focus, this dissertation aims at reflecting an innovative perspective on methods. Since each article adds to specific pieces of theory, the applied methodologies vary considerably; as a whole, they reflect the broad methodological variety of this dissertation. For instance, Part II is purely conceptual, whereas on the other end of the scale Part V uses a random intercept logit model combined with a simulation to isolate and interpret the theoretical contribution. It is noteworthy that Part IV makes a methodological contribution. Besides replicating currently applied segmentations, a multilevel finite mixture model with contextual (higher-level) covariates was established to reflect the emerging markets’ contextual peculiarities (Burgess and Steenkamp, 4 Objectives 7 2006). Thus, besides the theoretical contributions, the methodology was adapted to fit the purpose and the state of the theory (Edmondson and McManus, 2007). In sum, the objective of this dissertation is to theoretically and methodologically enhance current marketing knowledge and practices with a focus on the customer interactions. A graphical classification of the four parts’ theoretical background, the methods applied and the literature streams the parts contribute to is illustrated in Figure 2. 8 I I NTRODUCTION Figure 2: Theoretical and Methodological Localization, and Contributed Literature Streams 5 Summary and publication progress 5 9 Summary and publication progress Article 1: Reframing Customer Value from a Dominant Logics Perspective Although value has been accepted as the first and foremost driver of exchange, only initial ideas regarding the impact of the service- and the customer-dominant logic have been published. To fill this gap in literature, this article discusses the impact of both logics on the customer value concept. A conceptual model focusing on interactions with customers and the integration of the customer into the companies’ processes is derived. The article has been accepted for publication in the "Der Markt: International Journal of Marketing". Article 2: The influence of the Employer Brand on Employee Attitudes relevant for Service Branding: An Empirical Investigation The second article directly applies the ideas of the service-dominant logic to the creation of a service brand. In particular, the spotlight is put on the perceived employer brand and its role in the creation of a service brand by employeecustomer interactions. Doing so, the article investigates employee satisfaction and identification with the company as antecedent factors to the creation of a service brand. Most of the hypothesized relationships between the perceived employer brand and favorable outcomes were confirmed. The article is already published in the "Journal of Services Marketing". Article 3: Accessing the Biggest Piece of the Pie: International Segmentation with Emerging Markets In the third article, the requirements of an international segmentation that includes emerging markets are established. Several important issues distinct to this situation are pointed out. The ideas are numerically illustrated by a multilevel finite mixture model that simultaneously estimates country and consumer segments based on the consumers’ choice of interaction points (multichannel behavior). The article was accepted for the "American Marketing Association Summer Educators 10 I I NTRODUCTION Conference 2012" and the "41st Annual Conference of the European Marketing Association". At the latter, it was nominated for the best paper award based on a doctoral dissertation. Further, the article has yet passed the first review round in the "Journal of International Marketing". Article 4: Nobody said Leaving was Easy: Biased Consumer Behavior in Research Shopping Focusing on the consumer’s point of view in the buying process, the fourth article investigates research shopping, which is delineated as the tendency to switch channels between search and purchase phase. Applying the status quo bias theory, the following question is investigated: "Why are consumers reluctant to research shopping"? The findings of two studies, a large-scale survey and a laboratory experiment, suggest that consumers who use a single channel for searching, and in particular consumers satisfied with the search channel, are prone to a status quo bias and therefore, reluctant to research shopping. The article is in preparation for submission to the "International Journal of Research in Marketing". B IBLIOGRAPHY 11 Bibliography Burgess, S. M. and J.-B. E. M. Steenkamp, 2006. Marketing renaissance: How research in emerging markets advances marketing science and practice. International Journal of Research in Marketing, 23(4):337-356. Deshpandé, R., 1983. "Paradigms Lost": On theory and method in research in marketing. Journal of Marketing, 47(4):101-110. Edmondson, A. C. and S. E. McManus, 2007. Methodological fit in management field research. 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However, there is still no clear opinion about the concept per se, as there is currently no accepted CV definition. What is more, since a broad variety of fundamental developments, such as the rise of the service-dominant and customer-dominant logic, touched the CV concept in the past years, there is a need to reflect upon them. Therefore, the article addresses this challenge and analyzes recent developments to provide a common basis for future research. Moreover, the resulting implications for CV creation are provided. Focal questions that arise when considering CV include: What is the nature of CV and how can value be created considering the implications of both logics?1 Keywords: Customer value, S-D logic, C-D logic, Nature of value, Value creation 1 T. Schlager and P. Maas. This paper has been accepted for publication in the "Der Markt: International Journal of Marketing". 14 1 II D OMINANT L OGICS Introduction Within the past few decades, there has been a broad shift from searching for sources of competitive advantage within a company, to investigating external sources of competitive advantage (Cleland and Bruno, 1996; Khalifa, 2004; Woodruff, 1997). One of marketing’s most fundamental concepts, customer value (CV), recognizes this by placing the focus on the customer. The relevance of CV is not under discussion, as the creation of CV is considered the basis for a company’s business success (Huber et al., 2001; McDougall and Levesque, 2000; Payne and Holt, 2001; Porter, 1996; Woodruff, 1997), central to competitive advantage (Khalifa, 2004; Kothandaraman and Wilson, 2001; Parasuraman, 1997), and directly related to shareholder value (Cleland and Bruno, 1996). In 2007, the American Marketing Association (2007) adapted its definition of marketing to reflect the focus on value. More recently, Vargo and Lusch (2008a) defined value as "idiosyncratic, experiential, contextual and meaning laden" (p. 7). However, due to its complexity, there is still much discussion about the meaning of CV, as several definitions have been attached to the term (Smith and Colgate, 2007). The semantic heterogeneity is also highlighted by the multitude of different terms that have been used in the context of CV (Voima et al., 2010). Recently, the term customer has even come under discussion (Henneberg and Mouzas, 2008; Vargo and Lusch, 2004; Woodruff and Flint, 2006). Consequently, the marketing literature is still deficient in its understanding of CV (e.g., Blocker, 2011; Smith and Colgate, 2007; Woodruff and Flint, 2006) and calls for further investigation into CV are loudening (Voima et al., 2010). On top of this deficient understanding, various developments emphasizing the importance of the customer are increasingly addressed in the literature (Heinonen et al., 2010; Shah et al., 2006; Vargo and Lusch, 2004). Two of these developments substantially change the notion of CV, namely the rise of the service-dominant (S-D) and customer-dominant (C-D) logic. There are two primary reasons for the relevance of relating both logics to CV. On the one hand, both logics, especially 1 Introduction 15 the C-D logic, acknowledge the importance of the customer, and thus, inherently strengthen the focus on the customer and, as a result, the CV concept. On the other hand, the logics comprehensively summarize issues changing and advancing CV (Voima et al., 2010; Woodruff and Flint, 2006). We regard the impact on CV as twofold. Clearly, the scope in which CV is considered has risen (Edvardsson et al., 2011; Gummesson, 2008; Woodruff and Flint, 2006), which makes CV a concept that is even more vague than before. However, one might also argue that the mentioned logics have a large potential to inform, and thus, to further develop the CV concept (e.g., Voima et al., 2010; Woodruff and Flint, 2006). As we believe more strongly in the second aspect, we acknowledge the importance of registering the impacts for further enhancing CV. An initial attempt to outline the implications from the SD logic on CV comes from Woodruff and Flint (2006). The authors mention several important issues, such as the changing role of the customer. Nevertheless, they do not fully take into account recent trends, such as the importance of customer integration, the focus on interactions, and other issues with an impact on CV that were recently addressed by the S-D logic. For instance, a multitude of authors has discussed value and its creation (e.g., Grönroos, 2011; Grönroos and Ravald, 2011; Grönroos, 2008; Heinonen et al., 2010; Lusch and Vargo, 2006b; Payne et al., 2008; Vargo et al., 2008; Voima et al., 2010). By doing so, they implicitly advance CV without being directly related to CV. What is more, until now, no article has explicitly addressed the implications of the most recent discussions for CV, neither of the S-D, nor of the C-D logic. Intuitively, the following question arises: What impact do both logics have on the CV concept? The primary objective of our paper is to fill this gap in the literature and to provide a basis for further research by evaluating the influences of the S-D and C-D logic (Heinonen et al., 2010; Vargo and Lusch, 2008a; Vargo and Lusch, 2004). In particular, our article addresses the following research questions: How did both logics change the understanding of CV? As implications regarding the creation of value can primarily be recognized by taking into account the S-D and 16 II D OMINANT L OGICS C-D logic’s perspectives, we also discuss what this means for value creation. In doing so, we make particularly three contributions to the literature on CV: • The nature of CV • The ways of, and capabilities needed for, creating CV • The scope in which the nature and creation of CV is considered The scope of this paper is limited to the nature and the creation of CV, as our primary objective is to provide a starting point for other scholars. Neither do we enter in the current discussion, like the one regarding the roles within value creation (e.g., Grönroos, 2011), nor do we aim to provide a completely new conceptualization regarding CV, as we only focus on the changes implied by the S-D and C-D logic. The remainder of the article is organized as follows (see Figure 3). First, the S-D and C-D logic are outlined with a particular focus on the resulting changes in current value paradigms (i.e., from value-in-exchange to value-in-use). Next, we discuss the nature of CV and the range of CV considerations as major changes and enhancements are proposed by both logics. As a primary focus of the S-D and C-D logic is laid on value creation, we outline ways of creating CV from this novel perspective in a third step. Finally, a model of CV, from the logics perspective, is established and briefly delineated by summarizing the key points. While each section of the article emphasizes the current state of the literature, we broadly outline avenues for future research, as well as theoretical and practical implications, as we strive to provide a common parting ground. 2 The dominant logics and value concepts 17 Figure 3: The Structure of the Article. 2 The dominant logics and value concepts Two recently developed logics that substantially changed the understanding of marketing are the S-D and the C-D logic.2 As value considerations that are more general in nature and that are dominantly discussed in the marketing literature, namely value-in-use, value-in-context, and value-in-life, are closely linked to both logics; we discuss them after presenting the logics’ primary thoughts. The S-D logic was initiated in 2004 by the award-winning article Evolving to a new dominant logic for marketing (Vargo and Lusch, 2004). It accentuates a shift away from goods to service provision, lays a focus on intangible resources, the cocreation of value by the customer, and the notion of interaction and relationships, and proposes a phenomenological facet of value (e.g., Vargo and Lusch, 2006). Woodruff and Flint (2006) back the importance of the S-D logic for CV by 2 When using the logics, we refer to both upcoming logics as in a multitude of aspects, as they appear to have similar consequences. In case they differ, we only refer to the applying logic. 18 II D OMINANT L OGICS outlining several issues relevant for CV. As a result, an enormous impact on CV regarding its nature and value creation, in general, can be acknowledged (Vargo and Lusch, 2004, 2006, 2008a; Woodruff and Flint, 2006). Recently, the C-D logic appeared in the literature picking up thoughts of the S-D logic, as well as passing criticism on the S-D logic: According to the C-D logic, the S-D logic is still a supplier-dominant logic. Arguing so, the C-D logic even goes further in positioning the customer in the center by shifting the focus from the company’s processes to the customer’s reality and history (Heinonen et al., 2010). The primary distinction between both logics is the point of view. While the S-D logic is supplier focused, the C-D logic refers to the customer as the starting point of most relevant considerations. For instance, under the C-D logic, service providers need to enhance their understanding of the customers’ history, objectives and goals, followed by using services (Voima et al., 2010; Wikner, 2010). From a CV perspective, we regard this inherent focus on the customer as useful, even though the C-D logic has primarily been applied to a service context. Thus, although only a handful of articles have appeared regarding this logic, we apply its notions on CV. Both previously-mentioned logics, especially the rise of the S-D logic, have a fundamental impact on the development of CV (Voima et al., 2010; Woodruff and Flint, 2006). What they have in common is that they both emphasize the importance of the CV concept and impose foundational challenges for the CV concept (Heinonen et al., 2010; Vargo and Lusch, 2008a). More specifically, they enhance discussions about value considerations that are closely tied to the nature of CV and thus, appear as highly relevant for the presented article. Broadly discussed and commonly accepted is the shift from value-in-exchange to value-in-use (e.g., Ballantyne and Varey, 2006; Holbrook, 1994; Normann and Ramirez, 1993; Ravald and Grönroos, 1996). Similarly, this development is strongly underlined by both logics, as both even further develop the notion of value-in-use. Newer considerations, substantially fostered by the S-D and C-D 2 The dominant logics and value concepts 19 logic, are presented by the value-in-context and value-in-life (Edvardsson et al., 2011; Vargo et al., 2008; Voima et al., 2010). Thus, the three are briefly outlined in order to grasp their ideas. Value-in-use expresses the idea that value is created by using a product or service, rather than by producing the product or service (e.g., Lusch et al., 2007; Vargo and Lusch, 2004), which constitutes one key assumption of the S-D logic (e.g., Edvardsson et al., 2011). Although similar notions have already appeared in past studies (Alderson, 1957; Levitt, 1986; Vandermerwe, 1996), the idea has regained relevance (e.g., Heinonen et al., 2010). Therefore, its implications on CV, especially regarding the understanding of CV and the methods of value creation, need to be registered. This idea is advanced by value-in-context, which lays an emphasis on the role of "other market-facing, public, and private resources" (Merz et al., 2009, p. 330). In line with this, a notable article emphasizes the customers’ embeddedness into a social context by applying social construction theories (Edvardsson et al., 2011), while others mention complexity theory as a theoretical underpinning for a similar notion (Gummesson, 2008). Nevertheless, value-incontext has already received criticism as some scholars consider the idea as static (Grönroos and Ravald, 2011). The C-D logic recognizes this by emphasizing the highly dynamic and multi-contextual reality and life of the customer, implying a significant emphasis on the customer’s experiences and history, especially in service settings. As a result, the notion of value-in-life is proposed (Voima et al., 2010). Whether value-in-context or value-in-life is more appropriate is not yet commonly agreed upon. However, as this brief outline illustrates, substantial influences on value considerations are presented by the emergence of the S-D and C-D logic that, in turn, changes the understanding of CV. 20 3 II D OMINANT L OGICS Customer value’s nature As both logics influence the nature of CV, which has already been vague before, there is a need to address them. Up to now, several facets of CV have repeatedly appeared in the literature regarding CV. Among those, CV is described as being a trade-off between benefits and sacrifices (Ulaga, 2003; Zeithaml, 1988; Gale, 1994), subjective (Kortge and Okonkwo, 1993; Nasution and Mavondo, 2008; Ulaga, 2003; Vargo and Lusch, 2004), multi-dimensional (Holbrook, 2005; Matzler, 2000; Sweeney and Soutar, 2001; Ulaga, 2003) and relativistic (Gale, 1994; Holbrook, 1994, 2006). Moreover, it has been delineated as context-specific and experiential (Holbrook, 2005). Although the ideas of several facets have been picked up by both logics (i.e., CV’s context-specific and experiential nature), substantial changes can be recognized which are summarized in the following section. Figure 4 presents the development from the classical understanding of CV to an understanding from a S-D and C-D logic’s perspective; each facet is assigned the logic that mostly emphasizes its notion. Figure 4: The Changing Nature of Customer Value. 3.1 Phenomenological and experiential facet According to the S-D logic, a shift towards emphasizing the experiential and phenomenological facet of CV can be acknowledged by the shift towards emphasizing the experiential and phenomenological facet of CV (Vargo and Lusch, 3.1 Phenomenological and experiential facet 21 2004; Woodruff and Flint, 2006). Both terms, experiential and phenomenological, emphasize the co-creation role of the customer (Vargo and Lusch, 2008a). From this understanding, experience does not refer to the customer’s past experiences; it rather describes the perishability inherent to CV (Vargo and Lusch, 2008b). This underscores that value cannot be inventoried and is not created solely by the company that is, however, not new to the literature. Prahalad and Ramaswamy (2004b, p. 137) use the term in a similar manner and emphasize the shift toward experiences as they state that "value is now centered in the experiences of consumers". Similarly, even earlier contributions suggest an experiential perspective that includes symbolic, hedonic, and aesthetic aspects in the consumption process (Babin et al., 1994; Hirschmann and Holbrook, 1982). Although both terms are still discussed, phenomenological has recently been preferred, as experiential implies several other meanings, such as a focus on the past. In contrast, phenomenological emphasizes the idiosyncratic determination of value (Vargo and Lusch, 2008a) without implying a focus on the past. This accentuates that companies and customers have equal roles in value determination, as the process between both parties is emphasized, while the old-fashioned notion of value being provided by the company is no longer supported. The idea is explicitly expressed by highlighting interactions when considering the creation of CV as the S-D logic does. Woodruff and Flint (2006) explain the phenomenological nature of CV as context-specific, interactive, and attached with meanings.3 The C-D logic accepts that interactions facilitate the creation of value, however, contrary to the S-D logic’s supplier-oriented approach, it emphasizes that it is the customer, who ultimately determines the value created. In doing so, the C-D logic stresses that other processes not directly related to interactions also need to be considered (Heinonen et al., 2010). The interactive aspect implied in the term phenomenological is closely linked 3 Although Woodruff and Flint’s (2006) interpretation of the term phenomenological mentions context specificity, we treat this as a separate issue, as it has not been clearly delineated by the authors. Moreover, a multitude of other articles has further developed the meaning of context-specific without referring to it as the phenomenological aspect. Hence, we discuss this issue separately. 22 II D OMINANT L OGICS to another important characteristic. Seeing the customer in a constant and interactive process with other actors, such as companies and other customers, bolds the increasing focus on relational aspects, which is therefore underpinned by the S-D (Vargo and Lusch, 2004) and C-D logic (Heinonen et al., 2009, 2010). Hence, an increasing focus on relationships, rather than on transactions, is suggested (Vargo and Lusch, 2008b). According to both logics, the customer is engaged in multiple relationships, also to actors other than the company. The old-fashioned view on relational aspects as being dyadic does not seem to be supportable anymore (e.g., Voima et al., 2010). Intuitively, the customer now appears as being embedded within a context of other value determining resources and actors. 3.2 Context-specific facet Following the notion of multiple relationships, the literature acknowledges the important role of the customer’s external and social context in the assessment of CV (Edvardsson et al., 2011; Voima et al., 2010). In doing so, the idea of the customer, just like the company, being embedded in a system of other actors is expressed (e.g., Vargo and Lusch, 2004). In this complex system, the customer acts as a resource integrator, simultaneously combining various resources for value creation. This implies that the customer uses his/her own resources (i.e., knowledge and skills) and the resources of other actors. Hence, CV is dependent on a network of competences and resources. While the previous literature has accepted CV’s dependence on the context, the S-D and C-D logic have strongly emphasized and further developed this idea. One of the first guiding conceptual articles was put forth by Edvardsson et al. (2011). Social construction theories are applied to stress the importance of the social context for value creation under the S-D logic. On this basis, four propositions are delineated, two of which strongly underline the importance of the social dimension of value: "Value has a collective and intersubjective dimension and should be understood as value-in-social-context" (p. 333) and "the way in 3.3 Experience-based facet 23 which resources are assessed depends on the social context" (p. 334). It can be concluded that research efforts begin to adapt a more differentiated point of view, which includes the social context as an important variable for the determination of value. The C-D logic argues in a similar manner, stating that the dyadic approach that was historically used is not enough to display the complex construct of CV (e.g., Voima et al., 2010). Hence, this logic also highlights that the customer is socially embedded, interacting with other groups, such as other customers. Compared to the S-D logic, the C-D logic more strongly emphasizes the customer’s point of view. An even stronger focus is laid on the customer, and thus, on his/ her specific context. In sum, while the social context is emphasized by both logics, the C-D logic fully takes in the customer’s perspective (Voima et al., 2010). 3.3 Experience-based facet Contrary to the experiential and phenomenological nature, the facet of CV that we term experience-based refers to the past experiences of customers. As Voima et al. (2010, p. 4) states, "the starting point is the customer’s reality and life". Value is therefore regarded as part of the dynamically constructed and multi-framed reality of each customer. Although earlier contributions also recognized similar aspects (i.e., by terming it subjective, Woodruff, 1997), the focus on the customer’s history, and thus, the experience-based nature of CV was especially emphasized by the CD logic. In this light, value is termed value-in-life, which better explains the holistic view of the customer’s life than value-in-context (Voima et al., 2010). With this focus on the internal context, it is emphasized that value formation is extended beyond the interactive processes and the visibility of companies and includes the customer’s mental processes (Heinonen et al., 2010), resulting in an increase in complexity as now the customer’s history is also considered. A facet of the experience-based nature of value is its dynamic aspect, which expresses the constantly changing and adapting evaluations of what customers 24 II D OMINANT L OGICS value. It focuses on changes in customer-desired value (Blocker and Flint, 2007a, b). Still, there is disagreement among researchers and practitioners regarding how (Beverland and Lockshin, 2003, 2004) and why it occurs (Flint and Woodruff, 2001), which underpins its underdeveloped state (Blocker and Flint, 2007b). This issue is more relevant than ever, as the customer’s value perceptions tend to change at a revolutionary speed within today’s quickly changing environment (Flint et al., 2002). Consequently, failing to respect the dynamic may directly harm a company’s financial performance (Blocker and Flint, 2007b; Grieve and Ortiz, 2003). Additionally, Blocker and Flint (2007b) re-emphasize the importance of knowledge about what customers will value in the future for building and maintaining a sustainable advantage. As this research stream is closely connected to the experience-based facet, it is especially the C-D logic that draws attention to the dynamic and ever-changing nature of CV (Voima et al., 2010), partly supported by the S-D logic (Madhavaram and Hunt, 2008). 4 Customer value creation The S-D and C-D logic emphasize a fundamentally changed perspective on value and value creation. Intuitively resulting from discussions regarding CV’s nature is the question: How is CV creation considering this new standpoint? We address this question by recognizing that former frameworks (i.e., the one put forth by Smith and Colgate, 2007) have yet become outdated in the light of S-D and C-D logic. What is worthwhile to note is that discussions about the role of the company, as well as the customer in value creation, have appeared (Edvardsson et al., 2011; Grönroos and Ravald, 2011; Gummesson, 2008). We do not directly enter these, but instead reflect implications from the changing nature on a general level for two reasons. First, by drawing implications on value creation on a higher level, we aim to provide a basis for enhancing this discussion, while entering these would go beyond the scope of this paper. Second, we regard discussions as highly dependent on the point of view and the context (i.e., product vs. service context, 4.1 Interaction 25 Gummesson, 2008), which we do not discuss either. Thus, we take this avenue and address questions, which are more general in nature. More specifically, we identified interactions, a focus on relationships, and holistic marketing processes as responsible for value creation. 4.1 Interaction The recent literature concerning the S-D logic and value-in-use places a special emphasis on company-customer interactions as source of CV. Although interactions have already been acknowledged as source of value by other frameworks (e.g., Smith and Colgate, 2007), the notion is further enhanced. Emphasizing interactions as a crucial concept from a S-D logic perspective, Grönroos and Ravald (2011, p. 12) define interactions as "a mutual or reciprocal action where two or more parties have an effect upon each other". On this basis, it is argued that through interactive processes, companies can get actively involved in creating experiential value. Other contributions confirm this by seeing interactions as having the ability to promote experiential and phenomenological value (Ballantyne and Varey, 2006). Similarly, scholars assess that interactions provide the basis for forming the customers’ preferences (Mathwick et al., 2002). The importance of the company-customer interaction is underlined by the ability to facilitate value and to influence CV perceptions. As a result, it is broadly accepted that the customers’ creation of value is catalyzed through interactions (Grönroos, 2009; Grönroos and Ravald, 2009, 2011; Tynan et al., 2010). Although the difference between services and goods environments is still discussed, it appears that interactions being especially important in a service-context is accepted. From the companies’ perspective, this is due to the multitude of opportunities for co-creating value with the customer when acting within the customer’s sphere (Grönroos, 2008). One other issue that comes into play is the superior ability to sense the customers’ needs within interactions (Tynan et al., 2010). Although interactions per se are especially considered by the S-D logic, they may also provide a source of in- 26 II D OMINANT L OGICS depth knowledge about the customer and his/her life, which is rather emphasized by the C-D logic. More information can be generated, and as a result, companies can develop better insights about their customers. This issue’s importance is underscored by the C-D logic; therefore, we also argue that from a C-D logic point of view those company-customer interactions are highly relevant. 4.2 Integration Closely connected to, but still distinct from interactions as source of CV, is the integration of resources (e.g., Mele et al., 2010). This includes the integration of the customers’ resources which refers to providing customers with the opportunity to participate within the companies processes (e.g., Möller, 2006). Integrating the resources of customers and companies is treated as prerequisite for interactions. As Grönroos and Ravald (2011, p. 11) state "an inherent aspect of interaction is connectivity, i.e., the parties involved are in some contact with each other". With the term connectivity, the authors emphasize the integration of the companies’ and the customers’ resources. The importance of the integration of the companies’ and customers’ resources in the value creation process is strongly emphasized by the S-D logic (e.g., Vargo and Lusch, 2004). In a similar manner, Edvardsson et al. (2010) refer to getting close to customers by customer integration. We argue that this proximity to the customer partly takes in an avenue that is emphasized by the C-D logic. The C-D logic accepts the importance of interactions, but even goes one step further by also seeing "other activities and experiences" (Heinonen et al., 2010, p. 535) that are not directly connected to service-related interactions. From this position, customer processes, which are not controlled by a company, are considered as a highly relevant part within value creation. Hence, the challenge that needs to be addressed is discovering the underlying issues that cannot be easily recognized by a company. When the customer’s life is brought into the focus of value creation, an in-depth knowledge of the customer becomes necessary. As Heinonen et al. (2010, p. 538) note, "we 4.3 Focus on relationships 27 first need to understand the customers’ lives" which renders the importance of a fine-grained understanding of the customer. One way to gain this depth of understanding of the customer is integrating customers into the company’s processes. The aim of integration may therefore not only be the creation of interactions, but also the achievement of profound customer insights that go beyond insights gained by traditional marketing research methods. Hence, integration can also be considered a way for getting deep customer insights regarding what the C-D logic describes as value-in-life. We conclude by stating that the benefits of customer integration are twofold. On the one hand, interactions are generated, which in turn, are considered a source of CV. On the other hand, customer integration has the ability to generate in-depth knowledge of the customer, which may provide insights regarding value-in-life considerations and, as a result, for aligning future company actions. 4.3 Focus on relationships When facing notions like interaction and integration, it becomes obvious that relationships play an important role within value creation, which is a concept that is extensively highlighted by both logics (Vargo and Lusch, 2004; Voima et al., 2010; Woodruff and Flint, 2006). Both interaction and integration can be considered a means to the end, which is relational value. This is due to the important role of interactions in facilitating relationships (Payne et al., 2008; Prahalad and Ramaswamy, 2004a; Sandström et al., 2008; Vargo and Lusch, 2004). Generally, it is proposed that relationships themselves are a source of value (e.g., Howden and Pressey, 2008; Lindgreen and Wynstra, 2005); relational benefits and sacrifices need to be considered in the value formation process (Grönroos, 1997; Payne and Holt, 2001; Ravald and Grönroos, 1996; Ulaga and Eggert, 2005). In this light, trust and risk avoidance are especially considered focal constructs (e.g., Lindgreen and Wynstra, 2005). Most commonly, the literature assesses the value that emerges in relationships between companies and customers (Ulaga and 28 II D OMINANT L OGICS Eggert, 2005, 2006b), but also the relationship between customers and customers (Edvardsson et al., 2011; Voima et al., 2010) and between customers and brands (Payne et al., 2009). Similarly to the explanation regarding the integration of the customer into the company’s processes, we argue about the focus on relationships. Relationships are a source of value, but they also provide companies with a good understanding of the customer and his/her needs. A multitude of studies has connected relationships with the customers’ willingness to provide information (e.g., Lapierre, 2000; Wuyts and Geyskens, 2005). Even intimate information regarding the customer’s life can be sensed within a close relationship (Grayson, 2007; Wong et al., 2005). Hence, information that is more accurate can be gained concerning what customers value considering their life and experiences. Therefore, we propose that the relevance of relationships can also be considered as an important part in fitting the companies’ actions and offers to the customer’s life, stressed by the C-D logic. In summary, although the relational facet is not new to the literature, the focus on interaction and integration augments the importance of relationships from both logics’ points of view. Thus, focusing on relationships can be proposed as a fruitful way of creating value in a S-D and C-D logic context. 4.4 Holistic marketing processes The customer’s relationships to other actors, and thus, the notion of customers being embedded within a highly complex context, is emphasized by the two discussed logics. Again, one catalyst is the rise of the S-D logic that emphasizes the customer as resource integrator also using other resources for value creation (e.g., Vargo and Lusch, 2004). Consistent with this, developments, such as shift to the empowered and active customers (Edvardsson et al., 2011; Payne et al., 2009; Vargo and Lusch, 2004), customer-customer and social interactions, have rapidly gained importance. A similar argument holds true from a C-D logic point of view, which emphasizes processes in value creation that are not directly related to 4.4 Holistic marketing processes 29 services (Heinonen et al., 2009). Therefore, we briefly review processes that have been discussed for creating value in the face of the complexity delineated by the S-D and C-D logic perspectives. In this light, Edvardsson et al. (2011) emphasized the customers’ context as a source of value for the customer. That is, appearing more valuable to the social context enhances the individuals’ value perception. Hence, the relevant question to ask becomes: How can value creation through the social context be enhanced? We argue that an initial answer to this question can be found in the already discovered constructs and propose that branding provides a fruitful way to enhance value creation within a complex social context, as we will outline below. Brodie et al. (2009) summarized previous articles about the influence of brandrelated constructs on perceived customer quality and perceived value. Similarly, other articles have discussed the relationships between CV and branding (Brodie et al., 2009; Nasution and Mavondo, 2008; Payne et al., 2009; Tynan et al., 2010). A positive brand image indirectly enhances value-in-use (Strandvik and Rindell, 2010), a development which can be considered as one of the assumptions of the S-D and C-D logic. Similarly, the social context is emphasized by both logics; consumers form relationships with brands that reflect their social relationships (Payne et al., 2009), and thus, reflect the customer’s accumulated experiences and knowledge. Brands therefore act as comprehensive facilitator of CV. Although earlier contributions have argued that resources, like brands, may constitute a source of value (e.g., Dawar and Parker, 1994; Erdem and Swait, 1998; Möller, 2001; Srivastava et al., 2001), the idea of relating branding and company images to CV is a more recent phenomenon and has become increasingly popular. For instance, the importance of experiential value is emphasized by both logics (Vargo and Lusch, 2004; Voima et al., 2010). Cova and Pace (2006) closely relate the research on communities to branding by mentioning brand communities and brand tribes. Accordingly, brand communities and tribes may leverage a brand’s symbolic value, and therefore, provide a source of CV. Consistent with this Cretu and Brodie (2007) confirm through their research that official and unofficial brand 30 II D OMINANT L OGICS communities may be a source of CV, an idea recently supported by the literature (Tynan et al., 2010). Thus, we state that brands and brand communities facilitate the creation of value regarding the customers’ social context. However, recently appeared literature advances to a more general level, considering brands that reflect the customer’s social context as a source of value creation. Because of the network perspective on customer and company side respectively, many-to-many marketing, rather than a dyadic view with a customer focus, is proposed (Gummesson, 2008; Gummesson et al., 2010). With many-to-many marketing, the variety of resources that are integrated for creating value, on the customer as well as on the company side, are outlined. Accordingly, all of them need to be aligned in order to foster value creation (Henneberg and Mouzas, 2008). Tying up with many-to-many marketing, the S-D logic acknowledges the company’s function as resource integrator (e.g., Edvardsson et al., 2011; Vargo and Lusch, 2004). As a result, the important role of networks on the company side is underlined (Mele et al., 2010) and the idea of value networks, implying a multi-directional focus on relationships and interactions, is becoming increasingly accepted (Edvardsson et al., 2011; Lusch et al., 2010; Ulaga and Eggert, 2006a). In line with this notion, the final consumer’s role is described as network customer (Henneberg and Mouzas, 2008). Mirroring this discussion on the customer-side, a term that gets increasingly popular is network value, referring to all benefits and sacrifices that network partners create through actions and relationships (Mele et al., 2010). Accordingly, CV is the desirable outcome of value networks, which provides a holistic view on CV not only considering the value-added (Srivastava and Singh, 2010). From a S-D logic perspective, company networks may be the source for providing an environment that fosters the co-creation of value by the customer (Sandström et al., 2008). Although the idea of networks in terms of value creation is not new to the literature, the S-D and C-D logic certainly raise its importance in terms of creating value. By doing so, an organization that extensively engages in network considerations with the customer being centered in the middle of the objectives can enhance the facilitation of CV. 5 A framework for customer value 31 We conclude by stating that several opportunities for enhancing a favorable customer context exist. On the highest level, a well-defined many-to-many marketing strategy, which constitutes a complex process, is proposed. Each part of the process needs to be integrated and aligned. A more specific way of positively influencing the customer’s context is to enhance the formation of customer communities and to engage in successful branding as the context is influenced. We term the holistic efforts that provide the customer with a value-enhancing context as holistic marketing processes. 5 A framework for customer value Following the aim of our paper, which is to register influences of dominant logics on CV, on the one hand, we addressed the nature of CV. On the other hand, we mirrored the nature in terms of implications for CV creation. The model shown in Figure 5 underpins the paper’s idea, which is to draw recommendations regarding value creation based on the nature of CV. Hence we connect both sides, the nature of value with the respective source of value creation. As we have already comprehensively explained both issues, we outline the model on a high level. By means of the presented model, we strongly emphasize the customers’ and the company’s intertwined roles. This is done by displaying, for instance, the focus on the interactions with, and integration of, the customer (Grönroos, 2011; Payne et al., 2008). Furthermore, the embeddedness of both parties in a broader context underpins the complexity that is proposed by recent research on value (Edvardsson et al., 2011; Gummesson, 2008), which is closely connected to the variety of relationships that exist. Adding to this, we include the customers’ history into the considerations, proposed by the C-D logic (Voima et al., 2010). The network focus on the company side, with the underlying idea of many-tomany marketing, is regarded as necessary within an interconnected setting to facilitate value creation. At the bottom of Figure 5, the underlying discussions 32 II D OMINANT L OGICS about value are shown, which form the basis for explicating CV and relating it to value creation. The increasing complexity of CV considerations is shown first as value-in-use, then value-in-context, and finally value-in-life. Value-in-life and the experience-based facet underpin the importance of in-depth knowledge, which is displayed by insights resulting from interactions, customer integration and close relationships. Regarding the value-in-life, practical approaches still need to be found, as currently no research is dedicated to enhancing this type of value. Certainly, the model remains abstract and does not display all of the complex processes within the area of CV and the ways of creating CV, however, we argue that the most relevant implications of our manuscript, and thus, of both logics, are condensed to a model. Figure 5: A Framework for Customer Value from a Dominant Logics Perspective. 6 Discussion Until today, no single opinion has been established regarding CV (Gallarza and Gil Saura, 2006; Graf and Maas, 2008; Smith and Colgate, 2007). Within this vague 6 Discussion 33 context of CV, we recognize the ambiguous influence of both logics that changes marketing literature. On the one hand, the S-D and C-D logic add complexity to CV, making it an even more unseizable concept, while on the other hand, the logics enrich the understanding of the concept as CV is inherently compatible with the ideas of both logics (Voima et al., 2010; Woodruff and Flint, 2006). As we believe in the second issue, we reframed the considerations about CV from the perspective of currently discussed logics. We argue that by doing so, we provide more clarity for the concept of CV. For instance, our article addresses the embeddedness of both, the customer and the company, in the light of value creation. Moreover, the novelty and relatedness of both logics to the value concept strongly emphasizes the relevance of our paper: There is a clear need to reflect their impacts on the CV literature. One might argue about including the C-D logic as only few contributions have been made so far. However, we see two important reasons for doing so. Firstly, its thoughts are not completely new to the literature, as the considerations of the C-D logic build upon well-established concepts (i.e., the inherent customer focus, Drucker, 1974 cf. Heinonen et al., 2010). Secondly, as previously outlined, we comply with articles concerning the C-D logic by arguing that its ideas further refine the S-D logic with a focus on the customer (Heinonen et al., 2010; Voima et al., 2010) and thus, have the potential to further inform the CV literature. In this regard, the opinion of researchers arguing in favor of a C-D logic state that the S-D logic is still deficient in several points (Heinonen et al., 2009); these are included in our manuscript. An issue that is still under discussion in the value literature is the question of who is the value creator at all (e.g., Grönroos, 2008; Gummesson, 2008; Lusch and Vargo, 2006a). On purpose, we did not enter this discussion because the objective of our paper was to inform the CV literature with what is well-known to date and would have exceeded the scope of the presented article. Hence, we state that who creates value still needs to be reviewed by a multitude of articles. 34 II D OMINANT L OGICS Consequently, we acknowledge that, in terms of other issues, research still has to be conducted to enhance the understanding of CV. Finally, as the nature of CV changes, such as the focus on the customer’s history, context, and multiple relationships, the scope in which CV is considered has substantially increased (Heinonen et al., 2010; Voima et al., 2010). Considering this, an important step for the development of CV is pointed out: Not only companies, but increasingly, customers and their interactions with other actors are considered relevant for CV (Edvardsson et al., 2011). The literature still needs to determine whether one can translate these conceptual suggestions in practical advice, which we believe is accentuated by our practical implications. 7 Theoretical and managerial implications Our conceptual article entails several theoretical and managerial implications. The most important implication for scholarly research is the common starting point that we aimed at providing. Based on our article, the multi-facetted nature of CV, which has been described by a broad variety of terms (e.g., subjective, interactive), is condensed to mainly three facets that appear to be very important from the perspective of the two dominant logics. Consequently, more clarity is provided which may foster further research and, in turn, makes the concept more attractive. Moreover, we argue that CV is further enhanced by our manuscript and the conceptual framework we developed. Although ongoing discussions (e.g., Grönroos, 2008; Möller, 2006; Voima et al., 2010) coin the current literature on CV formation, and thus, affect CV literature as such, we argue that several commonalities can be determined in both logics’ implications on CV. For instance, both emphasize the value-in-context; however, the C-D logic accentuates the importance of the customers’ lives, tagged as value-in-life. Thus, we also contribute to the literature regarding both logics. In line with arguing for some commonalities, we need to emphasize that implications 7 Theoretical and managerial implications 35 from S-D and C-D logic might lead to different conclusions in some areas. The primary distinction is the C-D logic’s focus on the customer’s point of view, while the S-D logic argues from a supplier perspective (e.g., Voima et al., 2010). Thus, articles regarding CV might come to a different conclusion based on the perspective applied. Researchers shall thoroughly evaluate whether to argue from a S-D logic or a C-D logic point of view. For instance, when focusing on the customer’s past in determining CV, one may be better advised to apply a C-D logic, rather than an S-D logic approach. Whether the literature will reach a consensus is still to be determined by future articles, however, we believe that this article provides a solid basis to start from. Finally, a primary implication of the presented article is the explicit emphasis of the customer’s as well as the company’s embeddedness in a complex context. This notion has the potential to guide researchers in the discussion about value formation and to what degree the value can be determined by companies (Grönroos, 2008; Vargo and Lusch, 2008b). Besides the suggested theoretical implications, we propose that the presented article also has the potential to further inform practitioners. In the following, we illustrate the practical value by means of two areas. First, we suggest that the focus on interactions, as mainly emphasized by the S-D logic, highlights the importance of outstanding performance when interacting with customers. This, for instance, entails a thoughtful employee selection and training (e.g., Brodie, 2009), as it is mostly the customer-contact personnel that is interacting with the customers. The aforementioned suggestion is similarly valid for generating insights about customers and their (often not articulated) needs. In terms of generating customer insights, implications derived from the S-D logic might differ from the ones generated by the C-D logic as, for instance, mainly the latter logic emphasizes the importance of value-in-life, while the former one, to date, does not get explicit about this point (e.g., Voima et al., 2010). Here, well-trained personnel, in combination with routines that make the knowledge about customers explicit within a company (i.e., systems with detailed customer records), enables 36 II D OMINANT L OGICS the generation of insights, which in turn, can guide companies in supporting CV creation. Again, we want to stress that this recommendation illustrates that the S-D and C-D logic can differ in their implications. The second managerial implication to be stressed concerns value-in-context, which is supported by both logics. Although companies are challenged by the resulting complexity, they can use the interconnected world to more effectively communicate with customers. For instance, Web 2.0 strategies can easily be adapted, which makes reaching targeted customer groups easier. On the other hand, the customers’ social environment partly determines value creation (e.g., Edvardsson et al., 2011), strongly emphasizing that companies need to engage in consistent messages via all potential ways for reaching a customer. 8 Future research Clearly, many articles have discussed the nature and creation of CV within the last decade. Nevertheless, further research is needed to enhance the understanding of the concept. For instance, the phenomenological nature of CV still calls for further research, as discussions around the S-D logic are still ongoing (e.g., Mele et al., 2010). For example, the influence of companies is questioned when value is phenomenological in nature (Heinonen et al., 2009). As these valid issues arise, it becomes obvious that it still remains unclear what "uniquely and phenomenologically determined by the customer" (Vargo and Lusch, 2008a, p. 7) means. Thus, creating value from a phenomenological perspective needs to be investigated more extensively. However, the importance of use-situations has broadly been overlooked by research on CV. Therefore, we suggest that considering co-creation opportunities may enrich the current literature of CV in order to better express the notion of CV. In line with this argument is that the literature on the creation of CV has not profoundly evaluated the role of customer integration and interaction, most commonly, only specific issues have 8 Future research 37 been assessed (e.g., Mele et al., 2010). Initial research may evaluate the influence that providing opportunities for interaction have on the evaluations of CV. From this starting point, scholars might enhance research on this issue and approach more detailed research questions. Similarly, the appearance of value-in-context and value-in-life implies that a broad variety of unconsidered factors, such as the customer’s life or external factors, provides the basis for the value assessment (Edvardsson et al., 2011; Heinonen et al., 2010). It is stated that the customer is embedded within a social network, which has so far only been proposed conceptually (Edvardsson et al., 2011; Voima et al., 2010). Thus, we propose to further enhance recently appeared approaches, such as the one of Edvardsson et al. (2011). Only few research has been conducted within this area. Edvardsson et al. (2011) also suggest a combination of research approaches. We underpin this, as this might help triangulating the first constructs for research the customers’ social embeddedness. Empirical approaches to the customer’s evaluation of value in the light of a socialcontext can determine its importance and inform other scholars. This is certainly valid when it comes to value creation by means of the social context. In this point, there is still a gap within the literature regarding the indirect creation of CV as, for example, only few empirical studies exist up to now (Edvardsson et al., 2011). On the company side, one question to be asked might be: How can companies effectively influence the social context the customer is embedded in? In our manuscript, we provided some hints to doing so; nevertheless, research on this topic is still at the beginning. We also recommend researchers to begin evaluating the fit of concepts used in other fields, such as sociology (Heinonen et al., 2010). In a similar manner, the literature has suggested that CV is formed by the customer’s past experiences (Voima et al., 2010). A multitude of questions arises regarding this first approach to value-in-life. A first step could be to explore the relevant constructs, thus, we propose exploratory research. Similarly, creating value becomes a challenge when parts of the value formation process 38 II D OMINANT L OGICS are invisible. Clearly, deep customer insights need to be accumulated for doing so. We propose further integrating the customer into the company’s processes, and hence, determining his/her desires in case they change. Similarly, how to deepen the relationships to customers might be a fruitful way for future research. Nevertheless, no research has appeared regarding this issue due to its novelty. Thus, we suggest that tackling this issue is a fruitful and informing approach. Closely aligned to the importance of the accumulated experiences of customers is the dynamic nature of CV. As researchers have started to acknowledge the increasingly fast changing needs of customers, the research stream regarding the dynamic nature of CV calls for further investigation. Hence, the whole area of CV dynamics constitutes a broad avenue for future research (Blocker and Flint, 2007b). This is underpinned, as the inherent dynamism of CV is emphasized by both logics (Heinonen et al., 2010). Scholars may consider longitudinal approaches for evaluating how changes in what customers value affect a company’s strategic orientation and competitive advantage (Zhou et al., 2008). As pointed out, a multitude of network actors need to be considered on the supplier and customer side (Cova and Salle, 2008a, b). This leverages the challenges for current considerations. In the future, practitioners and researchers alike need to take this into account, as ignoring this shift would mislead companies in the decision-making process and would result in imperfect CV constructs. Thus, the social context enters questions like: Who is the value creator? What are the specific roles within value creation? We also suggest other disciplines than marketing to tackle this issue and strongly emphasize the value of interdisciplinary research. For example, integrating the literature on organizational or inter-organizational capabilities might enhance the CV literature in this point. Therefore, we suggest closely connecting notions from fields like strategy (DeSarbo et al., 2010; Priem, 2007) and sociology (for instance regarding social network considerations on CV, e.g., Edvardsson et al., 2011) to the CV literature. This may also result in a clearer picture of CV and its creation. Thus, we re-emphasize conducting interdisciplinary 8 Future research 39 research to determine valuable approaches for enhancing knowledge regarding the creation of CV. In summary, we recommend that future studies place an emphasis on the external environment and the past customer experiences to assess CV. As empirical work is still broadly missing, scholars might engage in this regarding the proposed topics. 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Strategic Management Journal, 29(9):985-1000. 52 III III S ERVICE B RANDING The Influence of the Employer Brand on Employee Attitudes Relevant for Service Branding: An Empirical Investigation Abstract There is scientific consensus that employees’ attitudes have a fundamental impact on customers’ experiences. This article focuses on how to provoke favourable employee attitudes that are relevant for the creation of the service brand. In this context, the aim is to develop a framework that combines the concept of the perceived employer brand with employee outcomes that are relevant for service branding. Data were collected from a employees of a worldwide operating insurance company (N = 2,189) and analyzed using structural equation modelling. First, the findings underpin the idea of a relationship between the perceived employer brand and service branding. Second, the influence of particular drivers for employee attitudes is determined. Furthermore, long-term effects are considered by investigating the influence of the perceived employer brand on potential employees’ identification. In sum, this paper highlights the influence of the perceived employer brand on employees’ attitudes, which is especially important in service settings.4 Keywords: Service branding, Employer brand, Service profit chain, Employee attitudes, Customer satisfaction, Customer service management 4 T. Schlager, M. Bodderas, P. Maas, and J. L. Cachelin. This paper has been presented at the 11th International Research Conference in Service Management and the 30th annual meeting of the Strategic Management Society". It is published in the "Journal of Services Marketing". 1 Introduction 1 53 Introduction Recently, marketing literature has shifted from a goods-centred logic to a servicecentred logic (e.g., Vargo and Lusch, 2004), focusing mainly on the role of knowledge as a fundamental source of competitive advantage. In a further step, a broader perspective rather than a dyadic approach between company and customers is suggested (Brodie et al., 2009; Vargo and Lusch, 2008). In the context of branding, literature discusses the importance of customer experiences created through various forms of interactions, such as customercustomer, employee-customer, and company-customer interactions (Ballantyne and Aitken, 2007; Brodie et al., 2009; Merz et al., 2009; Payne et al., 2009). Considering this broad spectrum of interactions, the companies’ control seems to diminish and it becomes obvious that not all relevant interactions, for example customer-customer interactions, can be influenced directly by the company. Based on these considerations, the following question arises: "How can a company still efficiently influence the creation of customer experiences within the complex network of interactions"? Past studies have recognised the importance of employees (Brodie et al., 2009; de Chernatony and Dall’Olmo Riley, 1997; de Chernatony et al., 2006), pointing out that customers sense the employees’ behaviour and attitudes during interactions (Vella et al., 2009). Based on these findings, our study investigates the relationship between the perceived employer brand (EB) and positive employee attitudes. In doing so, we focus on employee identification with the company and employee satisfaction, seeing as research regarding customer-contact employees (Pugh, 2001) or the service profit chain (Homburg et al., 2009) has proven these factors to positively affect customers’ attitudes in employee-customer interactions. Thus, although we do not investigate customer outcomes directly, we conclude by proposing a relationship between the EB and service branding (SB). To the best of our knowledge, the concept of the EB has not yet been proven 54 III S ERVICE B RANDING as relevant for SB. We believe that our idea has two major advantages. On the one hand, employee-customer interactions can be managed more efficiently than other interactions that involve the customer such as customer-customer interactions, which can rarely be directly influenced. On the other hand, the concept of the EB is especially relevant in knowledge intensive contexts (Berthon et al., 2005). This knowledge intensity is further emphasised by a service-centred context (Vargo and Lusch, 2008). Recognising this potential, the central objective of our approach is to make progress in relating the concept of the EB to SB. For this purpose, we empirically examine the influence of EB dimensions that positively affect employee attitudes, which in turn have been conceptually and empirically proven to have a positive impact on customer experiences. The rest of the article is structured as follows: First, we review branding within a service-centred context and outline the importance of employees. Next, we discuss the concept of the EB and why we propose it as an approach relevant to SB, thus accounting for our research framework. Third, we present the hypotheses that link the EB to SB-relevant employee outcomes. Finally, we empirically test these hypotheses and conclude with a discussion. 2 Conceptual development For the development of our conceptual model (Figure 6), we review the literature on branding, SB, the service profit chain and employer attractiveness. Based on this, we concretise the constructs of our framework and establish the hypotheses. Hsieh et al. (2004) define a brand as the feelings, impressions, perceptions, beliefs, and attitudes toward a company. Branding primarily focuses on external stakeholders (Aurand et al., 2005) such as customers. Positive brand attitudes affect customer behaviour, e.g., purchasing behaviour, and are thus crucial for a company’s long-term success (Hoek et al., 2000). Therefore, research on this matter is fundamental for understanding how a customer’s attitudes can be influenced. 2 Conceptual development 55 The meaning of the brand is a consequence of customers’ experiences (Brodie et al., 2009; Grace and O’Cass, 2004), which evolve between the interactions of stakeholders (Ballantyne and Aitken, 2007; Merz et al., 2009) such as employees and customers. Contrary to other approaches in the field of SB that consider coordinated brand communities or brand tribes for example, our approach focuses on the EB and consequently on indirectly creating the SB for customers through employees. We believe that this has two crucial advantages: First, employees constitute an important link in establishing the service brand, as proposed in different contexts by other scholars (e.g. Brodie et al., 2009) and second, a company can manage employees more easily than customers due to the fact that they are closer to the company. Research in service marketing reflects the importance of employees and employee-interactions (e.g., Brodie et al., 2009; Burmann and Zeplin, 2005; Chung and Schneider, 2002; Palmer, 2010; Vella et al., 2009). Particularly in a service-centred context, employees are able to build brand equity (de Chernatony and Segal- Horn, 2003; King and Grace, 2005). Consequently, researchers agree that, in a service-centred approach, customers’ experiences with the company are primarily gathered through interactions with employees (Iacobucci and Ostrom, 1995). Therefore, one of the company’s tasks is to manage employee attitudes and behaviours appropriately, because they become visible in the employee-customer interaction (Pugh, 2001). As our discussion demonstrates, there is an imperative need to focus on employees when considering branding from a service-centred perspective. This brief review clarifies that, although research on SB recognises the importance of employees, there is still a gap concerning the influence of employees on SB. The concept of the EB describes the degree of a company’s attractiveness to current (Berthon et al., 2005) and potential employees (Collins and Stevens, 2002; Slaughter et al., 2004). Hence, a strong EB generates favourable attitudes in potential employees. Berthon et al. (2005) state that there is a high similarity between the employer brand and other concepts such as the internal marketing 56 III S ERVICE B RANDING concept and employer branding. The first definition of the EB was given by Ambler and Barrow (1996, p. 187), who defined the concept as "the package of functional, economic and psychological benefits provided by employment and identified with the employing company". In this approach to the EB, the primary objective is to "provide a coherent framework for management to simplify and focus priorities, increase productivity and improve recruitment, retention and commitment". Thus, the main objective of the EB concept is to positively influence current and prospective employees in order to attract high-potential employees (Berthon et al., 2005). Companies with a strong EB can reduce costs for acquiring employees by enhancing favourable attitudes among current employees and, in doing so, also increase employee retention. Similarly, companies can decrease compensation for equally qualified and skilled employees compared to companies with a weaker EB (Ritson, 2002). The EB becomes especially relevant in today’s business setting due to the fact that high-potential and at the same time loyal employees are difficult to find (Berthon et al., 2005; Chambers et al., 1998; Collins and Stevens, 2002; Michaels et al., 2001). Companies that embrace EB tactics are well placed to gain a strong position in the competitive labour market. While EB studies do encompass theoretical research, they are primarily based on practical research (Berthon et al., 2005). Areas of research include employer branding, internal branding, internal advertising (Berthon et al., 2005), management (Gatewood et al., 1993), vocational behaviour (Soutar and Clarke, 1983), psychology (Collins and Stevens, 2002), and marketing (Ambler and Barrow, 1996; Ambler, 2000; Ewing et al., 2002). Nevertheless, the EB, or employer attractiveness, has not yet been applied to SB. In order to set up a framework that comprises both the EB and SB, we build upon the research of Brodie et al. (2009). They further developed a framework on SB that was initially set up by Calonius (1986) and refined by other scholars (Bitner, 1995; Grönroos, 1996, 2006, 2007). Their framework on SB discusses 2 Conceptual development 57 internal, external, and interactive marketing within the service-marketing triangle of company, employees and customers. In our empirical investigation, we focus exclusively on employee outcomes, seeing as a direct evaluation of customer outcomes is beyond the scope of our research. Nevertheless, we do discuss customer outcomes by applying the framework of Brodie et al. (2009) for discussing SB and the EB (Figure 6). The framework of Brodie et al. (2009) argues that a company should first create the service brand through internal marketing between the company and the employees. A strong EB contributes to triggering favourable employee attitudes (Berthon et al., 2005). This, in turn, leads to the second process of SB: The interactive marketing perspective. Here, employees are the main driver for customer experiences and thus, for SB (Brodie et al., 2009; Hatch and Schultz, 2001). Consequently, it can be assumed that the EB fosters the attitudes of customer-contact employees, which directly influence customer attitudes toward the brand (Mosley, 2007; Papasolomou and Vrontis, 2006). Moreover, the potential employees’ perceptions of the brand are reinforced as they sense the current employees’ positive attitudes (Gatewood et al., 1993). Finally, SB includes the external marketing perspective, which includes all processes of direct communication with customers. Considering the external marketing perspective, we only empirically investigate the direct positive effect on potential employees, and not the effect on customers. Nevertheless, potential employees may be an important future link to consistent SB, a point which emphasises the relevance of investigating this factor. The results of the discussion of the three relationships support that forming a strong EB contributes to establishing a consistent service brand image. Figure 6 summarises the proposed framework that links SB and the EB. 58 III S ERVICE B RANDING Figure 6: The Perceived Employer Brand and Service Branding. 3 Hypotheses development As the aim of our study is to research employee attitudes that provoke favourable customer attitudes towards a brand, we must first determine relevant customer attitudes. The first customer outcome that may predict future behaviour towards a brand (Mittal and Kamakura, 2001) and provokes positive brand attitudes (Spreng et al., 1995) is customer satisfaction. Furthermore, it has a significant effect on attitudes as well as on loyalty toward a brand (Spreng et al., 1996), which underpins its relationship to the creation of the service brand. Second, the ultimate goal of the brand-building process is to create a brand relationship (Aaker, 1991; Keller, 1993), which is reflected by the level of a customer’s identification with the brand (Kimpakorn and Tocquer, 2010). Furthermore, a customer’s identification with a company distinguishes the brand from others, which is one of the brand’s most important aims (Kim et al., 2001). In literature, these two customer outcomes - customer satisfaction and cus- 3.1 Economic value 59 tomer identification - are connected to employee attitudes. In a services context, the service profit chain takes the view that customer satisfaction is triggered by employee satisfaction (Heskett et al., 1997; Homburg et al., 2009) and customer identification by employee identification (Homburg et al., 2009). These relationships have also been assessed in other studies (e.g., Brown and Lam, 2008; Morrison, 1996; Punjaisri et al., 2009a, b; Rucci et al., 1998). Thus, in developing the hypotheses, we focused on employee satisfaction and their identification with the company. On a high level, scholars divide the concept of the EB into two parts. On the one hand, researchers take into account general attitudes towards the company. On the other hand, perceived job attributes are included when constructing measurements for the EB (Berthon et al., 2005; Collins and Stevens, 2002). In developing a measurement instrument for the EB, we partly applied the items put forth by Berthon et al. (2005) that measure the perceived EB for potential employees. We included three of their five dimensions: Economic value, development value, and social value, as they seemed best suited to predict favourable employee attitudes in the study by Berthon et al. (2005). However, we added two other dimensions: Diversity value and reputation value, which are identified as important for employee attitudes as will be outlined in the following. Furthermore, we slightly revised the items of the dimensions of Berthon et al. (2005) in order to better reflect the investigation of current employees. 3.1 Economic value The first dimension adapted from the conceptualisation of the perceived EB of Berthon et al. (2005) is economic value. It comprises items such as a good salary, a fair number of holidays, and reasonable retirement benefits. It is important to understand that the dimension includes both monetary and non-monetary benefits. Numerous studies have investigated the influences of economic values on employee attitudes. Benefits might constitute the most obvious factors in a 60 III S ERVICE B RANDING person’s choice of workplace and have been mentioned as being an important determinant of employer attractiveness (Weathington, 2008). Ash and Bendapudi (1996) indicate, that organizations provide benefits mainly for attracting and retaining employees. It is stated that increasing payment (or higher salary in general) is directly related to job satisfaction (e.g., Beutell and Wittig-Berman, 1999; Malka and Chatman, 2003; Sanchez and Brock, 1996) and identification with the organization (Lee, 1971). As economic value provides a hard measure for potential employees and, as a result, can easily be recognised by them as well, we argue that the positive relationship between economic value and identification also holds true for potential employees. Thus, we state the following hypotheses: H1a. Economic value positively influences current employee satisfaction. H1b. Economic value positively influences current employee identification. H1c. Economic value positively influences potential employee identification. 3.2 Development value Second, we adapted items of developmental value. This category refers to variables such as good training opportunities, an environment, and a good mentoring culture. Clearly, numerous studies have investigated the development potential within a company in connection with employee satisfaction (Judge et al., 2000). Furthermore, perceiving a company as having a high development value is closely related to career management practices which focus on the development of the employees’ skills (Greenhaus et al., 2000; Schnake et al., 2007). The perceived opportunity for development and promotion has been assessed as being positively related to employee satisfaction (Saari and Judge, 2004; Schnake et al., 2007). Furthermore, scholars have argued that organizational employee development programs are crucial in employee satisfaction (Jackson and Vitberg, 1987; Tansky and Cohen, 2001). 3.3 Social value 61 Similarly, literature outlines the positive influence of development value on organizational commitment, which describes the strength of an individual’s identification with and involvement in an organization (Lee, 1971; Mowday et al., 1982). Lee (1971) determined the employees’ perceived rate of current and future progress, as well as performance-reward relationships, to be strongly correlated with organizational identification. Moreover, Tansky and Cohen (2001) examined perceived organizational support, which is closely related to development value, in connection with organizational commitment and found a close relationship. Although commitment and identification are not identical constructs, both are closely related (Bartels et al., 2007). Development value is one of the main reasons for employees to apply for a certain job. We assume that potential employees consider this and, as a result, are positively influenced. Thus, we propose the following hypotheses: H2a. Development value positively influences current employee satisfaction. H2b. Development value positively influences current employee identification. H2c. Development value positively influences potential employee identification. 3.3 Social value The third dimension, social value, encompasses a strong team spirit, competent coworkers, a friendly relationship amongst individual co-workers, and a respectful environment. The items that constitute social value have frequently been assessed by scholars as they appear to be important drivers for positive employee attitudes (e.g., Saari and Judge, 2004). The role of co-workers and supervisors (competent or friendly) in enhancing favourable employee attitudes like satisfaction has been well-established in literature (e.g., Saari and Judge, 2004). Satisfaction has a positive impact on employee commitment, a construct strongly related to employee identification with the company (Avery et al., 2007; Harrison et al., 2006). In investigating the role of employee satisfaction as a moderator between 62 III S ERVICE B RANDING social value and employee identification, there is evidence that there is indeed a direct relationship between social value and employee identification. Social value has been investigated in numerous fields such as literature concerning organizational justice, social exchange, or organizational citizenship behaviour. The idea common to all three fields is that employees’ behaviour and attitudes can arise toward different groups within an organization, such as whole departments or individual co-workers (Lavelle et al., 2007). Organizational justice, for example, creates commitment and identification with the organization. In conclusion, enhancing employee identification lies within the responsibility of different levels of a company. Potential employees may also get an insight into the degree of social value at the company itself, for example during the recruiting process (Backhaus and Tikoo, 2004) or by being in contact with current employees who are in charge of identifying potential employees. As a result, the outlined argumentation holds true for future employees. Therefore, we propose the following three hypotheses regarding social value: H3a. Social value positively influences current employee satisfaction. H3b. Social value positively influences current employee identification. H3c. Social value positively influences potential employee identification. 3.4 Diversity value The fourth dimension, diversity value, refers to interesting job characteristics and is similar to interest value conceptualised by Berthon et al. (2005). However, we added several items that have been mentioned in the context of the EB such as challenging tasks (Backhaus and Tikoo, 2004; Saari and Judge, 2004; Towers Perrin, 2005) and a broad variety of tasks (Backhaus and Tikoo, 2004). Studies have shown that interesting job characteristics, and thus diversity value, are one of the most important determinants of job satisfaction (Judge and Church, 3.5 Reputation value 63 2000; Jurgensen, 1978), and others assessed it as the best predictor of overall job satisfaction (Saari and Judge, 2004). The amount of interesting work is found to influence the level of organizational identification (Lee, 1971). It is crucial to realise that potential employees may easily perceive these characteristics of a company as functional aspects, challenges, or unique opportunities of employment during the recruiting process and job descriptions provided by companies. This leads to the following hypotheses: H4a. Diversity value positively influences current employee satisfaction. H4b. Diversity value positively influences current employee identification. H4c. Diversity value positively influences potential employee identification. 3.5 Reputation value Finally, we added reputation value to the dimensions of Berthon et al. (2005). Cable and Turban (2001) describe the employer’s reputation as a job seeker’s beliefs about how other people evaluate an employer. Thus, we included items such as well-known products, good reputation of the company among friends, and good brand to have on one’s résumé. Several researchers have pointed out that current employees find value in working for a company with a good reputation. As an outcome of a company’s reputation, scholars have found a higher degree of identification with the company (Lievens et al., 2007; Smidts et al., 2001; Wilden et al., 2010). Similarly, a higher level of employee identification with a company is created by an attractive external image and an attractive organizational identity (Bhattacharya et al., 1995; Dukerich et al., 2002; Towers Perrin, 2005). Reputational value is closely related to perceived external prestige, which creates employee identification with the company (Bartels et al., 2007; Bergami and Bagozzi, 2000; Carmeli, 2005; Mael and Ashforth, 1992). Literature suggests that this holds true especially for potential employees (Edwards, 2010; Burmann et al., 2008). Several empirical studies confirm the importance of a company’s 64 III S ERVICE B RANDING reputation for attracting new high-potential employees (Cable and Graham, 2000; Preston and O’Bannon, 1997). To our knowledge, the relationship between a company’s reputation and employee satisfaction has not yet been investigated. However, there has been research on the relationship between a company’s value and customer satisfaction. Several studies indicate that reputational assets (e.g., company brand and reputation) positively affect customer satisfaction. This relationship has been proven in a multitude of contexts (Andreassen and Lindestad, 1998; Helm, 2006; Wiertz et al., 2004). We take this finding as also being valid for employee outcomes and hence, we assume a similar relationship in the employee context. As a result, we propose the following hypotheses: H5a. Reputation value positively influences current employee satisfaction. H5b. Reputation value positively influences current employee identification. H5c. Reputation value positively influences potential employee identification. In summary, we connected the EB with employee outcomes, which are considered to positively influence the customer outcomes relevant for SB. In the following, we will empirically investigate the hypotheses on a dimensional level to point out whether, and how, the EB can support favourable employee responses. This aims to provide managerial implications at a dimensional level on how a company can influence employee attitudes by refining dimensions of the EB. 4 Empirical study An insurance provider was chosen as the object of the analysis, seeing, as the insurance business is a good example of a service intensive sector. The relationship between the EB, employee response, and SB is particularly relevant for companies’ differentiation from competition, as most of the customers cannot distinguish 4 Empirical study 65 between products (Schlesinger and Schulenburg, 1993). Insurance policies are intangible, complex, and trust-based, which represents a great challenge for the customer-contact employees. Thus, for SB, in particular for insurance providers, it is crucial to attract the right employees and to develop favourable employee attitudes. Data were collected through a self-administered online survey. In 2008, employees of an internationally operating Swiss insurance provider were contacted and 2,189 employees from 12 countries responded. The questionnaire was distributed in English only as this is the company’s business language. The age of these employees ranged from 20 to 60 years. Only few were younger than 27 years (12 percent) and 19 percent were between 28 and 35 years old. The majority of the employees were older: 45 percent were between 36 and 49 years old and 24 percent were older than 50. Overall, there were slightly more male (55 percent) than female respondents. Participants rated a broad range of items aimed at determining an employee’s evaluation of the respective dimensions of the EB: Development value, social value, reputation value, economic value, and diversity value. Scale items were partly adapted from Berthon et al. (2005). Respondents were first asked to evaluate the EB dimensions regarding their current employer ("company today"), and rate them according to importance. Afterwards, respondents were asked to imagine an ideal employer who they would choose to work for ("company of choice") and correspondingly evaluate the EB dimensions based on their expectations. A five-point Likert-type scale was used in this study, 5 indicating maximum agreement and 1 indicating no agreement. Employee satisfaction and employee identification with the company were both measured on a single item scale. Although different approaches were considered, we chose to apply a global scale, measuring the overall evaluation of job satisfaction (Bettencourt and Brown, 1997). 66 5 III S ERVICE B RANDING Research findings Measurement quality was assessed using confirmatory factor analysis [CFA]. The fit indices suggested that the proposed constructs fit the data well across the "company today" model, chi-square [c 2 ] is 1,839.57 with degrees of freedom [df] are 237; the comparative fit index [CFI] is 0.930; and root means square error of approximation [RMSEA] is 0.056. Similar values pertain to the company of choice, c 2 is 1,608.56; df are 237; RMSEA is 0.060; CFI is 0.937 (Hu and Bentler, 1995). Comparing both CFA models based on CFI values, it seems that data better fits the model for the "company of choice", since the CFI and the RMSEA values are higher. All loadings except one (i.e., high job security) exceed 0.50 across "company today" and "company of choice", and every indicator z-value was found to be significant (see Table 1). Cronbach’s a scores (Bagozzi and Yi, 1988) and average variance extracted for all measurement scales indicate sufficient reliability. In terms of convergent validity, the proportions of variance in the items explained by the other factors are below the 0.50 criterion given by Fornell and Larcker (1981), except social value and diversity value for "company today", both of which are at 0.524. In addition, the co-variance between the factors is lower than the variance in the items explained by each of these, satisfying the discriminate validity criterion (Fornell and Larcker, 1981). However, the variance of development value shared with the factor social value for "company today" (0.438) is only slightly lower than the variance in the items explained by the factor development value (0.446). 5 Research findings 67 Measurement scales and respective indicators Company today Company of choice Economic Value (Cronbach’s a / Variance) a = 0.708 / .426 a = .828 / .425 Good salary .61 .75 (28.55) Good retirement benefits .59 (20.94) .80 (24.93) .66 (28.60) Fair amount of vacation .52 (19.13) Good health benefits .51 (18.52) .80 (17.76) High job security .53 (19.30) .48 (28.55) a = .821 / .446 a = .823 / .280 Development Value (Cronbach’s a / Variance) Good internal training opportunities .63 Good mentoring culture .73 (27.92) .71 (25.05) Room for creativity .66 (25.82) .71 (25.79) Empowering environment .71 (27.33) .74 (26.22) Good recognition for individual work .73 (27.80) .75 (25.03) a = .841 / .524 a = .860 / .248 Social Value (Cronbach’s a / Variance) .66 (25.03) Respectful environment .69 .63 Friendly relationship amongst individual co-workers .51(21.87) .57 (19.66) .75 (24.55) Strong team spirit .63 (26.70) Competent co-workers .57 (24.19) .76 (24.76) Good managers .80 (33.08) .76 (24.75) People first attitude Diversity Value (Cronbach’s a / Variance) .77 (32.08) .63 (19.66) a = .851 / .524 a = .870 / .311 Good variety of work activities .73 .73 Challenging tasks .82 (35.99) .88 (34.12) Interesting tasks Reputation Value (Cronbach’s a / Variance) .89 (37.72) .90 (34.90) a = .816 / .391 a = .867 / .352 Good quality of products .68 Well known products .64 (24.82) .81 (30.33) .77 (31.16) Innovative products .60 (23.20) .78 (26.16) Good reputation of the company amongst friends .70 (26.29) .66 (26.98) Good brand to have on the resume .70 (26.22) .67 (30.33) Fit indices c2 1839.57 1608.56 df 237 237 RMSEA .056 .06 TLI .918 .926 CFI .930 .937 Notes: z-Values shown in parentheses. Table 1: Summary of Confirmatory Factor Analysis and Reliability Estimates of Measurement Scales. 68 III S ERVICE B RANDING As discussed before, we assume that employees’ evaluation of the value of working with an employer influences his or her attitude towards the employer. To empirically verify the supposed relationships, as formulated in the hypotheses, two models were evaluated that include links between employees’ perceptions of distinct EB dimensions and employees’ attitudes toward their employer. We applied structural equation modelling (SEM) using the maximum likelihood estimation method. Table 2 shows the final results from the structural models. In the "company today" model, c 2 is 2,082.905 with df = 276 and c 2 /d f ratio of 7.547, a CFI of 0.930, and a RMSEA of 0.055 - which indicates that the model fits the data well. The second structural model was assessed for "company of choice", which indicates a better model fit concerning the Chi-square and comparative fit index: c 2 = 1,703.45, df = 330; c 2 /d f = 6.654; CFI = 0.936; and RMSEA = 0.06. Not all paths were supported in the model on "company today" since the z-values’ associations with the structural path were not statistically significant (p < 0.10) or the signs were incorrect. Similarly, two hypothesised paths had to be excluded from the model of "company of choice", as the structural relationships were found not to be significant. 5.1 Current employees The empirical results confirm that the perceived EB affects employees’ satisfaction and identification with the company, as shown in Table 2. Testing the path from economic value to employees’ job satisfaction at "company today" supports H1a (b = 0.15, p < 0.01); however, the effect of economic value on identification with the company, as hypothesised by H1b, cannot be supported, as the structural path is not significant. Employees’ development value had a significantly positive effect (b = 0.33, p < 0.01) on employees’ job satisfaction working with the "company today" (H2a), whereas there was no significantly positive effect on the identification with the company (H2b). In terms of perceived social value, 5.1 Hyp. Current employees Description 69 Exp. sign b p Result Fit indices Company today Economic Value –> Satisfaction + .15 *** Yes c2 2082.905 H2a Development Value –> Satisfaction + .33 *** Yes df 276 H3a Social Value –> Satisfaction + .20 *** Yes RMSEA .055 H4a Diversity Value –> Satisfaction + .14 *** Yes TLI .917 H5a Reputation Value –> Satisfaction + -.03 No CFI .930 Economic Value –> Identification + .02 No H2b Development Value –> Identification + .07 No H3b Social Value –> Identification + .19 ** Yes H4b Diversity Value –> Identification + .03 No H5b Reputation Value –> Identification + .49 *** Yes H1a H1b Fit indices Company of choice Economic Value –> Identification + -.04 No c2 1703.446 H2c Development Value –> Identification + .15 No df 256 H3c Social Value –> Identification + .42 *** Yes RMSEA .060 H4c Diversity Value –> Identification + .16 *** Yes TLI .925 H5c Reputation Value –> Identification + .37 *** Yes CFI .936 H1c Notes: * p < 0.10; ** p < 0.05; *** p < 0.01. Table 2: Results of Hypotheses Testing. 70 III S ERVICE B RANDING Figure 7: Relationships between Employer Attractiveness and Employee Response. 5.2 Potential employees 71 H3a and H3b can be clearly supported. Social value is found to significantly impact both employee’s job satisfaction (b = 0.20, p < 0.01) and identification with "company today" (b = 0.19, p < 0.01). The empirical results support the hypothesised significantly positive effect of "diversity value" on job satisfaction H4a (b = 0.14, p < 0.01). On the other hand, the estimated effect on identification with the company, as hypothesised by H4b, is not significant. Finally, in regard to the effect of reputation value on employees’ job satisfaction and identification with "company today", Table 2 indicates that the assumed effect on job satisfaction cannot be supported. Thus, H5a is rejected. However, the path from reputation value to identification with company today is significantly positive (b = 0.49, p < 0.01), supporting H5b. It is obvious that, to support the creation of the service brand among current employees, a mixture of measures that aim at current employees’ satisfaction as well as measures that aim at current employees’ identification needs to be considered. For example, social value was proven to support both favourable employee outcomes. Therefore, it is reasonable for companies to enhance this dimension. We also suggest that the dimensions that have the strongest influence on identification with the company and satisfaction should be taken into account when creating the service brand. Concerning satisfaction, the dimension development value is found to have the highest influence. In order to promote identification with the company, reputation value in particular needs to be delivered to current employees. Clearly, it is not an easy task to find the right proportion, as some dimensions clearly support one outcome but not the other (i.e., development value). 5.2 Potential employees Identification with the company of choice was tested as a dependent variable in order to analyse the potential expectations of employees. Employing the structural relationships in the company of choice model indicates what potential employees expect as value. However, other than what is proposed in H1c and H2c, what 72 III S ERVICE B RANDING employees expect as development value and economic value is not a positive driver for employees’ identification with an employer of their choice. The expected social value has the strongest positive effect on identification (b = 0.42, p < 0.01). Therefore, H3c is supported. As proposed by H4c, what employees expect as diversity value influences their identification with an employer (b = 0.16, p < 0.01). Thus, when considering potential employees that are important for the long-term success of the service brand, the provision of development value and reputation value in particular needs to be leveraged. Similarly, reputation value is a strong positive driver for employees’ identification with "company of choice" (b = 0.37, p < 0.01), as assumed by H5c. As these dimensions have also been proven to provoke favourable employee outcomes among current employees, a company should focus on them when creating the service brand through the EB. 6 Limitations/future research/discussion Studies in service marketing are confronted with the challenge of understanding complex interactions of different constructs, perspectives, and concepts. To name but a few, a service brand is linked to research on service quality (Vella et al., 2009), customer value (Brodie et al., 2009) and customer experience (Palmer, 2010). Due to the wide range of research streams concerning SB, we propose to focus on the employee’s role. To do so, we explore the relationship between the perceived EB (Berthon et al., 2005; Davies et al., 2004) and employee outcomes relevant to SB. The survey encompasses the employee perspective of companies’ ability to create value and influence employee satisfaction and identification. The link between employees’ attitudes, customers’ experiences, and finally the creation of the service brand are theoretically examined (Brodie et al., 2009; Burmann and Zeplin, 2005; Palmer, 2010; Vella et al., 2009). However, the impact of EB on customer outcomes has not been empirically investigated by our study. To 7 Theoretical and managerial implications 73 confirm our approach, future research needs to investigate employees’ attitudes and customers’ experiences simultaneously. Furthermore, the study was conducted in one company from one service industry only (the insurance industry). Hence, further research is called for to investigate the characteristics of different industries. Valid and reliable comparisons of companies across different industries need to be investigated in order to determine differences and similarities in value drivers. This would provide evidence as to whether development value, social value and reputation value are universal or industry-specific drivers on employees’ favourable attitude towards the employer and thus industry-specific determinants of SB. Nevertheless, we are confident that our suggested relationships hold true also in other contexts as the hypotheses are based on literature not investigating a insurance context. 7 Theoretical and managerial implications Despite these limitations, our study provides valuable insights to enhance the understanding of SB. A service brand is created in the triangle between company, employee, and customer. We state that a strong EB is an efficient instrument for fostering employee outcomes related to SB. It enhances employee outcomes in such a way that they, in turn, influence customer experience positively and thereby indirectly influence SB as follows: • a strong EB results in employee satisfaction and identification with the company; • satisfied and identified employees influence customers’ experiences positively and are therefore conducive to the creation of the service brand; and • the long-term creation of a consistent service brand is assured by also considering potential employees. 74 III S ERVICE B RANDING Next, our investigation related the EB to the service profit chain. By measuring employee satisfaction and employee identification with a company, both the conventional and the complementary service profit chain (Homburg et al., 2009) can be influenced by the EB. Therefore, our paper suggests that EB enhances the well-researched service profit chain and indirectly pays off by leveraging a company’s profits (Anderson and Mittal, 2000; Heskett et al., 2003; Heskett et al., 1994). As a result, companies may gain a competitive advantage by strengthening the EB, which enables them to manage their employees’ skills and favourable attitudes. This is strategically relevant to employee-customer interaction (Brodie et al., 2009; Homburg et al., 2009; Vargo and Lusch, 2004; Vella et al., 2009). Overall, the empirical results support that a strong EB enables companies to influence current and prospective employees. The relation between the EB and favourable employee outcomes is described empirically. Theoretically, we argue that these employee outcomes, in turn, provoke favourable customer outcomes that lead to the creation of the service brand. Thus, we propose the EB as a support for SB activities. 7.1 Retain and align current employees As shown, the EB supports favourable employee attitudes that enhance the customers’ experiences during interaction (Bernhardt et al., 2000; Bettencourt and Brown, 1997; Hartline and Ferrell, 1996; Homburg and Stock, 2004; Homburg et al., 2009; Pugh, 2001) and therefore hold a key role in the service setting. Customers’ experiences during the service delivery process shape their image of the company’s brand (Berry et al., 2002; Brodie et al., 2009; Vargo and Lusch, 2004). Hence, companies need to actively manage the EB because it assists in the creation of a company’s service brand. In doing this, it is important to deliver value to employees that enhances the level of employee satisfaction and results in their identification with the employer, which may in turn positively influence 7.2 Attract potential employees 75 customers’ experiences in the employee-customer interaction. The results support the idea that delivering value to employees encourages employees’ favourable attitudes (i.e., satisfaction and identification). Companies should focus on those value dimensions that are most likely to satisfy and identify employees - namely development value, social value, and diversity value. In order to actively influence employee satisfaction, human resource management ought to provide training opportunities, room for creativity and mentoring while creating an environment that empowers employees. Moreover, companies should build a social culture that focuses on friendly relationships among co-workers, adopt a "people-first" attitude, and provide interesting and challenging tasks for employees. 7.2 Attract potential employees The research findings support the assumption that a company’s ability to create and to deliver an attractive image of the employer to the potential labour market increases the likelihood of attracting high-potential applicants (Collins and Stevens, 2002; Slaughter et al., 2004), which is of great significance to the company’s future. Therefore, it must be imperative for companies to foster those value dimensions that attract potential employees: Social value, which encompasses the social image of a company, including a respectful environment; friendly relationships among co-workers; and a "people-first" attitude, which attracts employees even more than the good reputation of products or company. Hence, companies that support a strong culture of corporate social responsibility have an advantage regarding competition for talented and identified employees. Apart from social value, reputational aspects also (Cable and Graham, 2000; Edwards, 2010) influence potential employees’ identification with a company. This means that a company needs to invest in a good reputation or well-known products. Hence, service providers are challenged to build a good reputation in order to attract identified high-potentials that may create the future service brand. 76 8 III S ERVICE B RANDING Conclusion Our objective was to further enhance the understanding of service branding by providing insight into the complex relationship between the employer brand and employee attitudes. A company can effectively influence the creation of favourable employee attitudes that are closely related to customer experiences with a strong employer brand. 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The established requirements are numerically tested by applying multilevel finite mixture modeling on global consumer multichannel (search and purchase) behavior, thereby providing an initial large-scale study that compares consumers from EMs and HICs. In this course, existing finite mixture models are enhanced to reflect institutional effects, which are deemed tremendous in EMs, by combining information on consumer channel usage patterns with consumer and contextual covariates. Findings broadly support the suggested requirements, contributing to international segmentation and EMs literature. Practitioners can directly use the insights of this study for establishing an international marketing strategy, whereas the key finding proposes that a case-by-case analysis for EMs is necessary and that solely considering EMs as such derives wrong conclusions about international segmentation.5 5 T. Schlager and P. Maas. Previous versions of this paper were accepted for presentation and the American Marketing Association Summer Marketing Educators’ Conference 2012, and the 41st Annual Conference of the European Marketing Academy 2012. At the latter conference, it has been nominated for the award "Best paper based on a doctoral dissertation". Further, it has been handed in at the "Journal of International Marketing" where it has yet advanced to the second review round. 90 IV E MERGING M ARKETS Keywords: International segmentation, Emerging markets, Contextual embeddedness, Within-country heterogeneity, Finite mixture model 1 Introduction 1 91 Introduction “The fast rise of emerging economies has driven a shift whereby the centers of economic growth are distributed across developed and developing economies - it’s a truly multipolar world” - Justin Yifu Lin, the World Bank’s chief economist and senior vice president for development economics (2011) As this quote illustrates, the proliferation of so-called EMs constitutes a tremendous opportunity, and thus, "success in EMs is crucial to the future of many of our companies" (Burgess and Steenkamp, 2006, p. 338). However, entering and operating in EMs appears to be a mixed blessing for multinational corporations (MNCs). Stories of success, for instance Nokia’s, show the possibilities given. In China, the company facilitated relationships to local specialty retailers in the late 2010s. Hence, Nokia was able to exploit the rise of mobile phone penetration and to sell to the growth market located in tertiary regions (Chang and Horng, 2010). Contrary to this, companies such as Danone have provided us with excellent examples of how to fail due to EMs-specific circumstances. Although not having fully grasped the underlying logic of Brazil’s dairy products distribution, the French company focused on direct distribution despite the largest consumer segment buying with smaller retailers; Danone’s profit margins eluded (Sehgal et al., 2010). In line with both examples, scholars see reasonable evidence to state that consumers from EMs substantially differ from those in well-investigated HICs (Burgess and Steenkamp, 2006; Sheth, 2011). Accordingly, taking in the MNCs’ perspective, Sheth (2011, p. 176) explicitly questions, "should a company extend or adjust its marketing mix to suit the local [emerging] markets"? To answer this, MNCs must have a thorough understanding of EMs consumers’ preferences and especially, of the differences to HICs consumers since ignoring their peculiarities can end up in long-enduring difficulties up to complete failures. 92 IV E MERGING M ARKETS The scholarly field dedicated to revealing similarities and dissimilarities among consumers from different countries is international segmentation. Studies confirm heterogeneity between consumers from different countries (Deshpandé and Farley, 2004; Johnson and Tellis, 2008; Zhou et al., 2002), however, there is an emerging body of literature that argues for homogeneity among specific consumer groups across countries. Thus, simply considering a "country-as-segment"-strategy no longer appears to be acceptable (e.g., De Mooij and de Mooij, 2010; Hassan and Katsanis, 1994; Lemmens et al., 2007; Stremersch and Tellis, 2004; Ter Hofstede et al., 2002). This discussion is extended based on EMs since they have been assigned a special role, for example, in terms of the high level of heterogeneity among consumers (e.g., Douglas and Craig, 2011) and the rapid changes (Burgess and Steenkamp, 2006; Sheth, 2011), which raises crucial questions. First, to what degree do consumers of EMs differ from those of HICs? Second, how should segmentation approaches be arranged to unmask heterogeneity and therefore, the truly underlying segments? Regarding both questions, we acknowledge a huge dearth in literature. Subsequently, calls for further research on EMs and international segmentation from scholars (e.g., Burgess and Steenkamp, 2006; Cleveland et al., 2011; Cui and Liu, 2000; Dibb and Simkin, 2009; Papadopoulos and Martín, 2011; Sheth, 2011; Steenkamp and Ter Hofstede, 2002), as well as from editors (Bolton, 2003; Burgess and Steenkamp, 2011; Dekimpe, 2009; Griffith, 2012; Papadopoulos and Martín, 2011), are loudening. Research opportunities regarding EMs are even tagged as "paramount" (Burgess and Steenkamp, 2006, p. 338). The purpose of this article is to fill these gaps by shedding light on how EMs’ and HICs’ consumers differ; specifically, an approach to international segmentation that includes EMs is established. Primarily, we argue for splitting countries in smaller pieces according to geographical and class-specific patterns, accompanied by using distinct variables to detect institutional influences. The tone of this article is neither to "Easternize", which is to solely focus on EMs, nor to "Westernize", but rather to provide a balanced view on international segmentation. 2 Prior literature on EMs and segmentation 93 Thereby, the presented research makes substantial contributions - theoretically, methodologically, and practically. First, we add to international segmentation literature by specifically elaborating how to segment when EMs are included in the country sample. Next, our methodological objective is to enhance finite mixture modeling’s usefulness for international segmentation by including contextual covariates. Third, we add to empirical studies in the domain of EMs as "first, what we need is comparative empirical research on the actual behavior of customers [in EMs]" (Sheth, 2011, p. 179). In particular, we unmask similarities and dissimilarities of consumers across countries regarding multichannel behavior, which directly informs marketers when formulating an international marketing strategy or when entering into EMs. Thus, we also provide implications for current multichannel literature. For realizing these goals, we structure the article as follows. First of all, we briefly delineate conceptual and empirical approaches to international segmentation and EMs. Next, we discuss the peculiarities of EMs and elaborate the specific requirements and foci of an international segmentation that includes EMs. Thirdly, we extend finite mixture modeling for our purpose and present a numerical example on consumer channel behavior. Finally, we reflect on our study by discussing findings, theoretical and managerial implications, as well as avenues for future research. 2 2.1 Prior literature on EMs and segmentation Conceptual approaches In their seminal article on EMs, Burgess and Steenkamp (2006) exhaustively discuss the peculiarities of EMs. Further, they give advice to researchers regarding the challenges of conducting research in EMs. Adding to this, Sheth (2011) highlights five points that differentiate EMs from HICs (market heterogeneity, 94 IV E MERGING M ARKETS sociopolitical governance, unbranded competition, inadequate infrastructure, and chronic shortages of resources), thereby questioning the ideas of marketing as researched and practiced in HICs at their pillars regarding its usefulness in EMs. Although both articles underline the specific characteristics of EMs, they rather discuss general issues instead of focusing on segmentation. Yet, no research has investigated the requirements of market segmentation, be it solely for EMs, or for an international segmentation that includes EMs among other countries. In this international context, segmentation typically refers to grouping consumers across countries (Bijmolt et al., 2004; Hassan and Katsanis, 1994; Steenkamp and Ter Hofstede, 2002; Ter Hofstede et al., 1999). An initial approach to organizing international segmentation comes from Wind and Douglas (1972). They developed a hierarchical framework that first determines country segments and then suggests finding consumer segments within those, thus omitting the existence of cross-country segments. Additionally, although EMs are used to exemplify differences in countries, no specific conclusions are derived regarding the requirements of including them in the sample. Since that article, a multitude of other articles has approached international segmentation, the most advanced presented by Steenkamp and Ter Hofstede (2002). They summarized seven areas needing special attention in international marketing, namely the level of aggregation, the segmentation basis, construct equivalence, measure equivalence, sampling equivalence, the segmentation method and the sample size. Though referring to a "truly international segmentation" (p. 187), EMs are not devoted special attention. For example, institutional influences that are described as highly relevant in EMs (Burgess and Steenkamp, 2006) are not discussed. 2.2 Empirical studies Similarly, empirical studies that have taken the challenge of segmenting on an international level add to the knowledge regarding their implementation. Among those, some have focused on grouping consumers or countries separately, while others have highlighted forming consumer and country segments simultaneously. 3 Why should EMs be different for segmentation? 95 For instance, Peterson and Malhotra (2000) cluster countries by measuring consumers’ quality of life perceptions. They indicate their usefulness for international segmentation and provide the largest segmentation study with 165 countries worldwide so far. An important implication is that rather basic constructs tend to be applicable for segmenting HICs and EMs. In line with this, Agarwal, Malhotra, and Bolton (2010) found cross-culture-segments in their comparison of consumers’ service quality perceptions in India and the US regarding their perceptions of service quality. These insights confirm the usefulness of culture as segmentation variable for EMs. Gaston-Breton and Martín (2011) provide an auspicious approach that first segments countries based on economic indicators, such as the market size and potential. In a second step, consumers are clustered based on Inglehart’s values, accentuating the notion of basic values to be useful in international segmentation. Cleveland, Papadopoulos, and Laroche (2011) find ethnic identity and cosmopolitanism to be stable across cultures and countries. Moreover, they provide one of the few studies that include EMs (India and Mexico), although EM-specific implications are not drawn. All of the delineated studies include EMs, nevertheless, none has directed the focus of attention on the requirements of an approach that includes EMs. 3 3.1 Why should EMs be different for segmentation? Contextual embeddedness Although a general tendency toward the convergence of consumption patterns across global markets can be acknowledged (Townsend et al., 2009), scholars emphasize characteristics distinct to EMs (Burgess and Steenkamp, 2006; Sheth, 2011). As Burgess and Steenkamp (2006, p. 345) outline, "the heterogeneity of EM populations increases the importance of considering possibly hidden institutional context effects". Traditionally, definitions of EMs refer to a country’s purchasing power parity (PPP) or gross domestic product (GDP) (Burgess and 96 IV E MERGING M ARKETS Steenkamp, 2006). Undoubtedly, this attaches homogeneity to EMs and heterogeneity between EMs and HICs as economic factors have substantial influence on consumer behavior (Clark, 1990; Jain, 1989; Johnson and Tellis, 2008). Equally, it is noteworthy that EMs are typically coined by high growth rates. China yielded a double-digit GDP growth rate over the past decade, which introduces a constantly and rapidly changing environment resulting in similarly fast adapting consumer preferences. Besides these, literature underscores the influence of culture on consumers’ attitudes and behaviors (e.g., Johnson and Tellis, 2008). Contrary to the prevailing egalitarism and autonomy in HICs, EMs are rather characterized by hierarchy and embeddedness (Schwartz, 2004). For instance, Steenkamp and Geyskens (2006) investigated the determinants of the perceived value that consumers derive from using a company’s website. They found that individualistic cultures attach more importance to pleasure, privacy protection, and customization than collectivistic cultures. Consistently, Bolton et al. (2010) found differences between consumers from China and the US regarding the role of a referent on the determination of price fairness, vis-à-vis positioning collectivistic and individualistic cultures. In a similar way, the regulative context of EMs is less consistent than in HICs (Burgess and Steenkamp, 2006). For instance, online communities, such as Facebook and YouTube are only limited in access in China due to the country’s strict regulations (Brown et al., 2007). Additionally, competition in EMs is less fierce than in HICs since they are typically dominated by large government-operated companies or nongovernmental organizations. Below these, the competitive landscape is embossed by submonopolies, limiting consumer choice (Sheth, 2011). In sum, EMs’ consumers are embedded in a very specific, highly dynamic context that considerably influences consumers’ preferences and behavior. 3.2 Within-country heterogeneity The fragmented landscape, in which EMs’ consumers are embedded, constitutes a considerable challenge for any segmentation as it results in high heterogene- 3.2 Within-country heterogeneity 97 ity; in general, the context differs across regions (Sheth, 2011). The prevailing dissimilarity among consumers poses a severe threat to a central requirement of segmentation, namely "segment homogeneity" (Wind, 1978). On consumer side, geographical mobility is decisive in determining homogeneous segments. In an early approach, Andreasen (1966) claims that "other consumptions patterns [. . . ] are appropriate" in different geographical regions (p. 346). As economic and diffusion literature states, mobility is needed for developing similar behaviors and consumption habits, whereas dissimilarities arise as a result of immobility (e.g., Agarwal, 2003). Diverging consumer preferences and behaviors are more likely to develop across the regions of EMs since the lower class, also referred to as "bottom-of-the-pyramid", is limited in terms of their mobility (Cui and Liu, 2001) and their possibilities for exchange. For instance, the lower class has little access to transportation, electricity, or internet (Sheth, 2011). While they are forced to buy in local stores, members of the upper class may be free to make a choice. Missing exchange among consumers and immobility in particular unfold their influence in large EMs, such as China and India (e.g., Enderwick, 2009), due to their sheer size. Taking both as examples, more than 1 billion people live in each country, thereby outstripping Europe with only about 700 million people by far and paired with the limited ability to change location, geography-specific consumption patterns tend to develop. Further, there is a large gap between the upper class, which is assumed to converge to western consumer behavior, while the lower class is particularly limited in their behavior, which underscores the within-country heterogeneity (Alden et al., 2006; Burgess and Steenkamp, 2006). Finally, an issue closely related to geography is language. For instance, China has seven official languages; however, more than 80 languages are used on a general basis. The number of different accents in conversational Chinese is even higher, which introduces a further source of heterogeneity (e.g., Craig and Douglas, 2006). Accordingly, EMs deviate from HICs in their level of within-country heterogeneity. 98 4 4.1 IV E MERGING M ARKETS The requirements of EMs segmentation Micro-level analysis In their article on international segmentation, Steenkamp and Ter Hofstede (2002) differentiate between three levels of geographic aggregation: No aggregation, country-level aggregation, and regional aggregation. Especially pursuing a "onecountry-as-segment"-strategy receives only little support nowadays (e.g., Ter Hofstede et al., 2002). Following the notion of within-country heterogeneity, a finer-grained segmentation for EMs appears even more relevant. An good example for the high within-country dispersion is Hong Kong, which has historically been affiliated to the British Empire and is now related to China. Reasonably, Hong Kong differs from China in terms of its development, which is reflected in diverging preferences and behaviors. While registering all states into the same higher-level segment would violate the assumption of within-country heterogeneity, for example, the question may arise whether upper class consumers from poorer regions are misclassified when solely considering regions. Hence, besides a more precise geographic segmentation, researchers may also come to using a social-class-based segmentation. Considering the Western lifestyle of the upper class in EMs (Burgess and Steenkamp, 2006), global segment membership might be similarly determined based on the class a consumer belongs to. Commonly attached to class-membership is the living area, that is, members of the lower class tend to live within rural areas whereas the upper class rather inhabits metropolitan areas (Craig and Douglas, 2006). In line with the various sources of within-country heterogeneity and the notion that specific consumer groups of EMs rather resemble HICs’ consumers, disregarding the diversity of EMs in segmentation would fail to identify consumer groups with similar patterns. We suggest that microanalysis is necessary in EMs to reflect the high level of within-country heterogeneity, for instance, based on geographical aspects or the consumers’ class-membership. 4.2 Selection of relevant respondents 4.2 Selection of relevant respondents 99 A main concern in any segmentation is the determination of the unit of analysis (Wind, 1978), which constitutes a main issue in EMs research (Burgess and Steenkamp, 2006). Particularly, the selection of the appropriate consumers is a twopronged challenge. First, as emphasized, EMs tend to develop rapidly (Burgess and Steenkamp, 2006; Sheth, 2011), leading to similarly quickly changing consumer preferences; consumers in EMs become "moving targets". Consequently, consumer segments in EMs change quickly, endangering "segment stability", a strongly advocated prerequisite of segmentations (e.g., Wedel and Kamakura, 1999; Wind, 1978). Mitigating this problem is difficult; at least partly a trade-off between more accurately segmenting current segments and determining future segments is necessary. On the one hand, when selecting a representative sample, good approximations about the current segments can be made; however, estimates about the future segment distributions might not be feasible. On the other hand, when selecting consumers that represent a future-oriented group, such as early adopters, inferences about future consumer segment distribution can be drawn; nevertheless short-term decisions may be imprecise. Hence, depending on the segmentation’s objective, prudential estimates about the growth of the segments may be necessary. Second, while segmentation studies in HICs typically rely on individual respondents, the collectivistic nature in EMs and the high cultural embeddedness may require taking into account different decision makers (Brown et al., 2005; Burgess and Steenkamp, 2006) since the value of individual choice theory for collectivistic cultures is questioned (Steenkamp, 2001). On a consumer level, Lee and Green (1991) determined the role of relevant others in the purchasing process. In comparing Korea and the US, they found that in the EM, the opinion of relevant others has a substantial impact on the decision, whereas in the individualistic country, a person’s own attitude is decisive. It is worthwhile to note, however, that not each EM is rather collectivistic. Family members or peer-group leaders 100 IV E MERGING M ARKETS exhibit a substantial influence (Talukdar et al., 2002). Hence, when consumers interact with others in decision-making, solely relying on individual opinions may be biased, whereas, more meaningful segmentations can be derived when identifying or controlling for relevant others. 4.3 Segmentation variables and covariates Similar to the micro-level analysis, which opens avenues for finding global consumer segments, variables and covariates for an international segmentation should be thoroughly chosen in order to detect patterns underlying the segments. In particular, we advocate construct equivalence, the focus on stable variables, and the inclusion of contextual covariates. Construct Equivalence Myers et al. (2000) as well as Steenkamp and Ter Hofstede (2002) emphasize the importance of construct equivalence for international studies, which refers to whether the variables used for segmentation differ in their meanings across countries (Steenkamp and Ter Hofstede, 2002). The rationale behind a focus on construct equivalence in international segmentation is that "segmentation criteria for one market may not work in another" (Cunningham and Crissy, 1972, p. 100). While this is crucial for international studies, an even higher focus needs to be laid on construct equivalence when EMs are included in the sample since there is reasonable evidence that EMs significantly differ in their decision-making processes (e.g., Burgess and Steenkamp, 2006). To date, only few constructs have been confirmed to be useful for cross-border research (Deshpandé, 1999). In reflecting this idea, Sheth (2011) points out that prior to deriving constructs, scholars first need to investigate actual consumer behavior, which is then suggested to be a solid segmentation basis. Sociodemographic variables, income and the social class (Burgess and Steenkamp, 2006; Cunningham and Crissy, 1972; Kamakura and Wedel, 1995; Sheth, 2011) cannot only be used for defining micro-level analysis, but may also serve as covariates, depending on the segmentation’s objectives. In 4.3 Segmentation variables and covariates 101 Brazil, for instance, Cunningham et al. (1974) found distinct shopping behaviors, such as the product selection, the relevant services, the information sources, and the transportation system used for arriving at the store, depending on the class a consumer belongs to. Consistently, Steenkamp and De Jong (2010) recognized that demographic variables are important indicators of Western behavior in EMs. However, as shown by recent research (Strizhakova et al., 2012; Strizhakova et al., 2011), patterns might need to be adapted. In studies on Russia and Brazil, Strizhakova et al. (2012) found four different segments within the young adult cohort; two of them, the "glocally-engaged" and the "globally-engaged", are particularly prone to global firms and brands. Thinking in cohorts rather than in age might therefore be more germane in EMs concerning the affinity to MNCs’ products. Reviewing previous segmentation studies, several further types of variables have been developed for cross-border segmentation, among them attitudes and perceptions (e.g., Agarwal et al., 2010; Lemmens et al., 2007; Peterson and Malhotra, 2000; Ter Hofstede et al., 1999; Yavas et al., 1992), and values (e.g., Gaston-Breton and Martín, 2011), which have thus been confirmed regarding construct equivalence. Focus on Stable Variables The rapidly changing context in EMs is not solely relevant in the selection of respondents; a considerable challenge is presented by finding a stable segmentation basis, or by controlling for dynamics. To a certain degree a trade-off between considering rapid changes and selecting solid segmentation variables is inevitable when including EMs. Yet, research has identified variables that are fairly stable and thus, can be drawn on for an international segmentation that includes EMs. An individual’s value system not only shows high construct equivalence, it also tends to remain rather stable over time (Bilsky and Schwartz, 1994) as it reflects an individual’s fundamental beliefs. Moreover, values contain considerable explanatory power for consumption and purchase behavior (Burgess, 1992). The most prominent system to measure values stems from Schwartz (1992), which has been extensively applied and tested by international research and for EMs 102 IV E MERGING M ARKETS (Steenkamp and Burgess, 2002). Closely related are psychographic measures, like the personality traits, which also have been confirmed to be useful for EMs research by conceptual (Burgess and Steenkamp, 2006) and empirical articles (e.g., Gaston-Breton and Martín, 2011; McCrae and Terracciano, 2005). Both can be applied, however, in general, we advocate for awareness of the variables’ stability when deriving a segmentation that includes EMs. Inclusion of Contextual Variables Referring to the specific context in which EMs’ consumers are embedded, it becomes obvious that researchers need to take circumstances that potentially limit or alter consumers’ behavior or preferences into account. In line with Burgess and Steenkamp (2006) who propose the systematic inclusion of institutional factors in EMs research from a contingency-theoretic point of view, we suggest contextual covariates to be a central requirement for EMs segmentations. With respect to the classifications of EMs the main criterion of differentiation refers to a country’s economic state; however, within large EMs there is a need for a finer-grained distinction of contextual variables as regions may substantially differ. Again taking the example of China, the Eastern part with the metropolitan areas averages a PPP per capita of nearly US Dollar 15,000 while the Southern and the Central part average a PPP below US dollar 7,000 (National Bureau of Statistics of China, 2011). When living in an area with a considerably low PPP, supply of specific goods may be limited. Typically, the technological context, for instance, the penetration of new media, strongly correlates with a country’s economic state (Hsieh et al., 2004). Thus, new media in EMs is not that widespread today as compared to HICs; on a more general level, Sheth (2011, p. 169) described these factors as the "inadequate infrastructure [of EMs]", which considerably restricts consumers in their behavior. Closely related is the level of urbanization (Inman., 2004); usually, the more rural the area in EMs is, the less access to internet is provided. For instance, even upper class consumers in rural areas of China might lack a broadband Internet connection, which in turn may lead to a missing information source and a considerably limited choice of products. Finally, 4.4 Holistic approach 103 a characteristic that coins the context and has been identified as influential by a variety of empirical and conceptual papers is culture (e.g., Douglas and Craig, 1997, 2006; Hsieh et al., 2004). Several frameworks for classifying countries according to culture are suggested (Hofstede, 1983, 1991; Schwartz, 1992), which can be drawn on for EMs. To wrap up, the context needs to be reflected when determining international segments. 4.4 Holistic approach Segmentation studies have the inherent aim to aggregate consumers and to simplify the reality in order to find feasible managerial approaches. However, in line with Sheth (2011) who questions the possibility of segmentation approaches, we remind researchers not to oversimplify the real situation as the approaches for EMs may not arrive at a similar simple level as in HICs. Referring to the fragmented supply side, the highly heterogeneous consumer market, and the contextual embeddedness, an abstraction of the reality may fail to provide a reliable picture of a market’s landscape. Consistently, Burgess and Steenkamp (2006) name the presence of confounding institutional effects in EMs, which may result in wrong inferences about the segment membership. Complex interactions could disguise the real reason for consumer behavior; therefore, unmasking these relationships is particularly relevant for the success of a segmentation that includes EMs. On an individual level, Burgess and Steenkamp (2006) exemplify this by means of shopper profiles: Data collected by supermarket scanners tends to be highly heterogeneous in EMs, even from the same location. In case the consumers’ profiles are connected to systemic differences, one may accumulate shopper and purchase data to control for patterns that influence the purchase. On a contextual level, the slow technology adoption in EMs serves as example. Whereas one may attribute the slow technology adoption to the cultural or technological context, the reason might be of regulative nature (Calantone et al., 2006). Attaching the development to cultural aspects only, would fail to reveal the underlying mechanism. Accordingly, MNCs need to determine the sometimes-unobvious 104 IV E MERGING M ARKETS source of heterogeneity when segmenting consumers. In this regard, we stress that it is not necessarily sufficient to focus on few variables only. A combination of micro-data with contextual variables might be necessary, when segmenting in EMs. Additionally, due to the outlined interactions among variables that influence the segmentation basis, considering an interplay between variables could be taken into account. Depending on the segmentation’s aim, and the magnitude of the confounding influence, researchers might adapt segmentation in a way that they are not biased as illustrated by the example of the shopper profiles. Eventually, compromises between providing a realistic segmentation and a simplification may be necessary. 4.5 Data considerations In terms of methodological considerations, our article predominantly marks out potential issues with primary and secondary data in EMs; however, we do not join discussions concerning what analysis approach best fits an international segmentation that includes EMs. Deriving Primary Data An important issue when collecting data in EMs is to check for measurement equivalence, which refers to whether the operationalized measures of the constructs are comparable across groups or across countries (Myers et al., 2000; Steenkamp and Baumgartner, 1998). In fact, this issue is particularly relevant as the tremendous differences between EMs and HICs result in a serious threat to measurement equivalence, which potentially hampers any international segmentation. In attempting measurement equivalence, primarily Steenkamp and colleagues have advanced our knowledge. Steenkamp and Baumgartner (1998) describe different levels of measure invariance in cross-national consumer research, and a framework for treating this issue. Further, Steenkamp and Ter Hofstede (2002) partition measurement equivalence into three parts: Calibration, score, and translation equivalence issues. 4.5 Data considerations 105 Calibration equivalence refers to the comparability or equivalence of units. Among other constructs, these may be monetary units or measures of weight (Steenkamp and Ter Hofstede, 2002). As they emphasize, aforementioned can easily be corrected for missing calibration equivalence, nevertheless, sociodemographic variables can be more challenging. For instance, EMs and HICs differ in their definition of class membership; given the diverging PPP in HICs and EMs, belonging to the upper class is marked by different income levels. Hence, researchers may need to adapt the specification of classes to a broader level to make inferences about the respective class membership. Score equivalence determines the equivalence of the observed scores on equal measures (Myers et al., 2000). Because of missing score equivalence, the observed scores across countries lack of comparability, which directly relates to invalid results in international segmentation (Steenkamp and Ter Hofstede, 2002). Missing score equivalence may stem from cultural or cross-national differences, or response styles with regard to the selected measures (De Jong et al., 2008; Steenkamp and Baumgartner, 1998); as such, including EMs increases the likelihood of biased data. Especially constructs that are likely to be affected by a specific response style (i.e., extreme response style) need attention. Although possibilities to detect, control and correct response styles and missing measurement equivalence exist (e.g., Brown et al., 2005), we recommend mitigating problems upfront. A pretest in the specific EMs might reveal potential deficits in the conceptual approach of the segmentation. When particularly little is known, focus groups or in-depth interviews with EMs’ consumers may indicate systemic threats to score equivalence that might have remained unrevealed otherwise. Additionally, translation issues need to be resolved. As outlined, several languages are used on a common basis in EMs, especially in large EMs such as China or India. Mainly, due to the size of EMs, different meanings may be attached to similar words within the same EM. Discussions with insiders of the specific EM or with natives may be necessary. In a similar vein, translation equivalence as termed by Steenkamp and Ter Hofstede (2002) is certainly an issue 106 IV E MERGING M ARKETS when using primary data from EMs. To enhance translation equivalence, common approaches are presented by backtranslation or parallel translation (Douglas and Craig, 2006). However, as for research in EMs in general (Burgess and Steenkamp, 2006), respecting those three issues above might not mitigate deriving invalid data. The commonly lower level of education, expressed by lower literacy rates and numerical skills, underlines the importance of easily-comprehensive questions whereas longer scales should only be used if inevitable (Lonner and Berry, 1986). When especially little is known about the segmentation basis in the respective EM, qualitative techniques and pretests can serve for testing the measures (Burgess and Steenkamp, 2006). Thus, when conducting segmentation studies in EMs, one needs to thoroughly consider the research settings and the operationalization of questions to derive meaningful data in terms of measurement equivalence. Obtaining Meaningful Secondary Data The contextual embeddedness entails the imperative to focus on variables that describe the institutional context. Though variables like the living area might as well be derived by directly asking respondents, contextual data, such as the internet penetration, needs to be obtained from secondary data sources. First, data should stem from a reliable source, which is, contrary to HICs, rather difficult for EMs (Burgess and Steenkamp, 2006). Although several international market research agencies have opened offices in multiple EMs, some EMs have yet received little attention; finding data from a single source may not be possible. Taking the PPP of China as example, varying numbers are provided by distinct institutions. Thus, data and its sources need to be thoroughly inspected as numbers may potentially even be estimated. Specifically, Burgess and Steenkamp (2006) advise researchers to consult technical reports of the data sources to mitigate using unreliable sources. However, standardized data for EMs suffers from being solely available on a country-level, whereas local information sources, such as Chinastatistics or Indiastats.com, provides more accurate data on a regional basis 4.5 Data considerations 107 which is increasingly relevant, as within-country heterogeneity entails the need for micro-level analysis. Using countries as proxies for influences, such as culture, needs to be critically reflected; the advantages of this procedure (to reflect the contextual embeddedness), need to be set aside its disadvantages (Schaffer and Riordan, 2003). Still, when micro-level data is available from reliable sources, there is a need for bringing the data on a comparable level for the segmentation requiring to check for calibration equivalence, and partly to adapt data. The Internet penetration in various countries exemplifies this. While HICs tend to measure Internet penetration based on the number of subscribers, data for EMs may be provided based on actual users (i.e., Instituto Brasiliero de Geografia e Estatistica, 2010). Finally, secondary data needs to be checked for the relevance concerning the targeted population (Burgess and Steenkamp, 2006). Table 3 summarizes the established requirements of an international market segmentation that includes EMs. Traditional characteristics Novel requirements 108 Research phase Conceptual level Level of analysis Macro-level analysis –> Micro-level analysis a) Regional / statewise analysis b) Area-level analysis (rural vs. metropolitan) c) Class-level analysis (upper class vs. bottom-of-the-pyramid) Selection of relevant respondents Individuals –> Relevant respondents (to unmask decision-making processes) a) Cautious reliance on individuals b) Consideration of peer-group leaders (word-of-mouth) c) Focus on group-effects (consumer interactions) Segmentation variables and covariates Construct equivalence –> Careful variable and covariate selection a) Emphasis on construct equivalence (lack of variables / covariates) b) Evaluation of variables’ / covariates’ temporal stability c) Inclusion of contextual covariates Extent of the approach Focused approach –> Holistic approach a) Adoption of individual-level covariates b) Adoption of contextual covariates c) Consideration of interactions among variables / covariates Methodological level Primary data Measurement equivalence –> Valid and reliable primary data a) Emphasis on measurement equivalence • Calibration equivalence • Score equivalence b) Usage of simplified research settings / constructs Context level data Standardized global data –> Comparable Secondary Micro-level Data a) Inclusion of comparable micro-level data b) Evaluation of reliability of micro-level data c) Data adjustment (calibration equivalence) Table 3: The Changing Requirements of an International Segmentation that Includes EMs. IV E MERGING M ARKETS • Translation equivalence 5 Model formulation and segmentation basis 5 109 Model formulation and segmentation basis For numerically illustrating our approach, we apply multilevel finite mixture modeling, which is popular for international segmentation (e.g., Bijmolt et al., 2004; Ter Hofstede et al., 1999; Wedel et al., 1998). The methodology assumes that each consumer belongs to a specific segment, while uncertainty about class membership is implied (Vermunt and Magidson, 2002). 5.1 Consumer channel behavior as the segmentation basis In our case consumers’ decisions about what combination of channels to employ for searching and purchasing financial services provides the basis for segmentation (Neslin et al., 2006; Verhoef et al., 2007). We applied this setting for three reasons: First, using constructs that have not yet been confirmed for EMs research is avoided, whereas behavioral patterns constitute a rather reliable measure. Second, we suggest that consumer multichannel behavior provides an excellent example for grasping contextual influences. For instance, EMs are characterized by collectivistic culture patterns which are expected to more heavily rely on peers for information search. Third, Sheth (2011) explicitly emphasizes, "first, what we need is comparative empirical research on the actual behavior of customers" (p. 179). Besides these advantages, it is worth noting that consumer channel behavior is a highly relevant consumer behavioral pattern (Konus et al., 2008). Especially as consumers can adopt multiple channels, companies strive for a deep understanding about how to organize channels (e.g., Neslin and Shankar, 2009) and decrease complexity by means of segmentation. 5.2 Basic model The objective is to determine segments according to the channel selection, presented by binary data. Nominal latent class analysis is used for determining 110 IV E MERGING M ARKETS segment membership with respect to the binary data structure at hands. For deriving the basic model, we borrowed from Bijmolt et al. (2004). In accordance, let i = 1, . . . , I denote the international sample of consumers, j = 1, . . . , J denote the higher-level groups (e.g., geographical regions or classes), and k = 1, . . . , K denote whether a specific channel is used for searching, and whether it was used for buying. Our data regarding searching is therefore structured as J x I x K table. In case a consumer i from a higher-level group j decides to use a channel k for searching or buying, we denote the vector Yi jk = 1, otherwise Yi jk = 0. As consumers could choose up to three channels, vector weights were adjusted to 0 for inexistent combinations. The buying channel is added as categorical variable. As we assume a limited number of consumer segments in one country, and a limited number of higher-level segments, let s = 1, . . . , S denote consumer segments, and t = 1, . . . , T denote country segments. The consumer segment membership represents the latent trait, Xi j for each consumer of a higher-level group using a specific combination of channels. Equally, Z j describes the higher-level segment membership. Equation (1) denotes the conditional probability of using a specific combination of channels for searching and buying Yi j for a consumer, depending on the membership of higher-level group to a higher-level segment (Vermunt, 2001). N j represents the sample size of a higher-level group. The respective equation of the multilevel mixture model is specified as follows: P(Y j ) = T Â t=1 " Ni P(Z j = t) ’ " S K Â P(Xi j = s|Z j = t) ⇥ ’ P(Yi jk |Xi j = s) i=1 s=1 k=1 ## (1) 5.2 Basic model 111 Denoted above is firstly, the probability of a higher-level group belonging to a specific higher-level segment, secondly, the probability of a consumer belonging to a specific consumer segment, given a specific higher-level segment membership, and the probability of a consumer using a specific combination of channels. As Bijmolt et al. (2004) describe, the probability of using a specific combination of channels is therefore a weighted probability (with the weights represent the probability of a consumer to belong to a specific consumer segment and higher-level group belonging to a higher-level segment respectively). We specify consumer covariates as concomitant variables (Gupta and Chintagunta, 1994). Let V be the respective covariate on consumer level (with 1 l L). We denote the logit equation including consumer covariates Vli j as covariate for consumer i within country j: ◆ ✓ L exp g0s0 t + Â gls0 Vli j l=1 ◆ ✓ P(Xi j = s0 |Z j = t) = S L Â exp g0st + Â glsVli j s=1 (2) l=1 This delineation is consistent with the basic multilevel finite mixture model as proposed for international segmentation by Bijmolt et al. (2004). For a more detailed model delineation please refer to their article. To reflect the scholarly emphasis on the impact of the context (e.g., Burgess and Steenkamp, 2006; Douglas and Craig, 2011), we extended the model in a way that allows for including higher-level covariates. Again, the covariates were assumed to directly influence the higher-level segments. In this respect, let W m j be the higher-level covariate (with 1 m M for the higher-level covariates). We delineate equation (3): 112 IV E MERGING M ARKETS P(Xi j = s0 |Vli j , Z j = t 0 |Wm j ) = ✓ 6.1 ◆ exp g0s0 t 0 Wm j + Â gls0 Vli j l=1 ◆ ✓ S L exp g W + g V Â Â ls li j 0st m j s=1 6 L (3) l=1 Numerical application Data collection and analysis The study was conducted at the end of 2010. For collecting data, we employed online surveys, which were broadly discussed and double-checked with bilingual country representatives to avoid ambiguous descriptions among countries and languages in line with our suggestions. For reaching consumers, we worked together with local research contacts to guarantee reliable information (Hoskisson et al., 2000). After initial questions, the channels were described in detail to ensure a common understanding among respondents (Burgess and Steenkamp, 2006; Steenkamp and Ter Hofstede, 2002). At the end of the questionnaire, respondents were asked questions regarding demographic patterns (age, gender, living area), which were used as covariates. As psychographic measure we used the three of the NEO-PIR personality traits, namely conscientiousness, openness, and agreeableness, validated by Rammstedt and John (2007) which constitutes a temporarily stable measure. We chose those three as they are assumed to relate to consumer multichannel behavior. For instance, openness might be an indicator for using personal channels since consumers are likely to find more pleasure in interacting with others. Similarly, conscientious consumers are proposed to gather information through multiple channels rather than relying on solely one channel. Additionally, we prechecked the distribution of other covariates regarding comparability. This provided us with 18,239 useful questionnaires from five continents (Asia, Australia, Europe, North-America and South-America), including six EMs: Brazil, China, India, Mexico, Poland, and the Czech Republic, 6.1 Data collection and analysis 113 which represent EMs from all continents but Africa. Though no EM from Africa was included, we argue that the sample is appropriate as it includes multiple EMs that have a considerably different context. The primary information was complemented with secondary data on contextual characteristics. Most information was readily available at the database of the Worldbank (2011); however, very specific information had to be compiled from local sources to reflect the consumers’ actual context (Bureau of Economic Analysis, 2011; Census India, 2011; Statista, 2011; Census Bureau United States, 2011; Indiastat, 2010; Instituto Brasiliero de Geografia e Estatistica, 2011; National Bureau of Statistics of China, 2011; Statistics Bureau, 2011; Telecommunication Carriers Association, 2011; Telecom Regulatory Authority India, 2011; VMW Analytic Service, 2011). Specifically, we included the PPP, the living density (inhabitants per square kilometer), and internet penetration. This partially required native speakers to translate the information and to validate its comparability. Hofstede’s value dimensions served as proxy for culture. We used two dimensions, individualism and uncertainty avoidance, which were specified according to the recently updated levels (Hofstede, 2001). Again, those two were selected as we assumed a relationship to multichannel behavior. For example, when being averse to uncertainty, it is suggested that more channels are used for gathering information as well as personal channels are being preferred to online channels. Some information was not available whether for the specific year or for the specific geographic region. In this case, covariates were extrapolated from country-wise information. Before analyzing segments, data was weighted within (to correct for deviances of the respective country’s demography by case weights) and between countries (to obtain inferences about real segment sizes) (Schaffer and Riordan, 2003; Steenkamp and Ter Hofstede, 2002) according to age, gender, income and level of urbanization. The descriptive results of the consumer’s choice regarding the search and purchase channel are displayed in Appendix A. 114 6.2 IV E MERGING M ARKETS Results Following the notion of within-country heterogeneity, we divided countries based on two criteria: The first model uses a geographic split, whereas the second model apportions consumer’s based on their class membership (see Appendix B). In order to avoid arriving at a local maximum and to check the robustness of the estimation, the geographical and the class-specific split were estimated ten times using the Expectation Maximization algorithm (Vermunt, 2004). As of the large sample size in our study, we used the Consistent Aikake’s Information Criteria (CAIC; Bozdogan, 1987) for selecting the most parsimonious and superior model (Bijmolt et al., 2004). The lowest CAIC value and, therefore, the optimal combination of consumer and higher-level segments is obtained at 14 consumer and 8 higher-level segments with a CAIC value of 168,116.526, using the class-specific separation. We continued the analysis with the class-specific model as the geographic split displayed a worse model fit (CAIC: 168,841.822). This also indicates that a micro-level analysis specified according to class membership provides a superior split than a regional split. The final model was validated by n-fold splits. More precisely, randomly selected parts (i.e., for the 2-fold validation one half) of the sample were dropped. The model values are reported in Table 4. 6.2 Results 115 Results and Model Fit Statistics Segment 1 UK 2 Singapore, Malaysia, India low 3 Spain, Korea, France, Brazil (high and low), Mexico (high, medium, low) 4 Japan (high, medium, low), Germany (high, medium) 5 China (high , medium, low) 6 US (high), Poland (high, medium, low), 7 Austria, Belgium, India (high, medium), US (middle, low) 8 Australia, Sweden, NL CAIC 168116.526 2-fold 3-fold 4-fold 5-fold Consumer 29.43 % 30.19 % 30.10 % 32.09 % 31.56 % Higher-level 0% 0.07 % 0.03 % 0.09 % 0.08 % Consumer .657 .645 .651 .629 .633 Higher-level 1.000 .988 .993 .983 .985 Consumer .540 .533 .553 .506 .512 Higher-level 1.000 .985 .992 .980 .982 CZ (high, medium, low), Germany (low) Classification errors Entropy R2 : Standard R2 : Table 4: Results of Class-Specific Model: Higher-level segments. At first glance, the large number of consumer segments (i.e., 14) does not appear practicable. However, we argue differently for three reasons. First, in our study consumers were able to specify behavior from eight search and four buying channels. For example, if only the combination of one search channel was chosen, 32 possible combinations arose. To realistically describe segments, consumers were able to check up to three channels for the search phase (i.e., searching via a provider’s website and through a personal contact, while buying via an independent web provider) which theoretically leaves room for thousands of unique combinations. Second, within several higher-level segments, specific consumer segments nearly do not exist, which fairly reduces the number of segments to be consider for a specific market (Bijmolt et al., 2004). Finally, five consumer segments (existing in nearly all regional segments) account for 62 percent of the consumers. We conclude that the number of consumer segments does not affect the practicability of our results. We used three values to assess how well our model predicts class membership. First, as suggested by previous studies, we applied an entropy measure which 116 IV E MERGING M ARKETS is a measure similar to the R2 value. Here, higher values (up to 1) confirmed a good fit, equivalent to a high reduction of classification errors. The consumer entropy measure was fairly high with .657 in the light of 14 identified consumer segments. Country entropy measures reached a deterministic level with a value of 1.0; hence, countries can be classified into one segment without any uncertainty. Next, we displayed the percentage of misclassifications of consumers and higherlevel segments, which was considerably low with 29.4 percent of the consumers and 0 percent of the countries misclassified. The standard R2 that has explanatory power in a nominal model yields a value of .54 for consumer segments and 1.0 for country segments. Posterior classifications describe the probabilities for various results. Table 5 shows the probabilistic distributions of the usage of a specific channel into consumer as well as country segments. Overall the probability to use the offline provider for searching is highest (58 %), followed by the website of a provider (49 %) and the peers (46 %). The least attractive channel for searching is via journals (11 %). Note that the accumulated percentage will be 300 in maximum, as consumers were asked to specify up to three search channels. Similarly, the probability to buy via an offline provider is highest (51 %), followed by the independent offline channel (20 %). Briefly, we will introduce those three consumer segments, which show the highest percentages in a country segment (consumer segments 4, 7, and 12). Segment 4 focuses on online channels, most likely to search via a provider’s website (100 %) or an independent website (40 %). Further, the services are predominantly bought through the providers website (72 %), thus representing an online affine group. Segment 7 is fairly provider focused, mainly using the offline channel (98 %) or website (64 %). For buying, the offline channel of the provider is highly preferred (91 %). Segment 12 typically prefers independent offline channels (i.e., intermediaries that are not directly related to a specific company) for searching (98 %) and for buying (91 %). Hence, commonly expected combinations have been preferred by the respondents. Segments 6, 10, 11, and 14 are negligible as they, in sum only represent less than 5 % of the 6.2 Results 117 consumers. Table 6 reports the probability for any consumer segment to appear in any higher-level segment. 118 Channel usage probabilities x Channel usage probabilities Search of consumer segments Channels 1 2 3 4 5 Size .06 .09 .08 .13 .12 Onl. provider .94 .35 .11 1 .10 Onl. independent .12 .99 .09 .40 .06 Forum .23 .07 .07 .15 Offl. provider .61 .36 .98 .33 .81 7 8 9 .14 .08 .11 .64 .76 .40 1 .11 .32 .34 .61 .27 .86 .17 .87 .56 .39 .41 .67 .14 .08 .13 .09 .08 .86 .41 .11 .98 .12 .65 1 .18 .45 .69 .32 .91 .98 .43 .44 .64 .49 .29 .41 .32 .40 .37 .17 .12 .08 .19 .16 .10 .10 .13 .69 .71 .51 .64 .55 .57 .52 .58 .41 .49 .26 .38 .50 .47 .39 .46 .47 .11 .06 .31 .14 .14 .14 .14 .09 .11 .13 .16 .13 .22 .15 .16 .12 .10 .10 .11 .05 .12 .11 .12 .11 .13 .30 .07 .15 .20 .23 .15 .15 .29 .18 .06 .15 .29 .04 .05 .19 .06 .11 .07 .12 .11 .21 .59 .27 .65 .63 .45 .52 .51 .50 .46 .51 .71 .13 .14 .24 .17 .16 .19 .24 .28 .14 .20 .10 .06 .16 .10 .10 .10 .09 .72 .05 .41 .10 .24 .06 .53 .10 .04 .74 .07 1 1 .99 .98 Notes: The largest probability and relative size is underlined (for searching and buying). The second largest value is boldface (for searching and buying). Probabilities below .03 not shown. Onl. = online; Offl. = offline; Ads = advertisements; independent = not directly related to the company bought from. Table 5: Model Results for Consumer and Higher-Level Segments. IV E MERGING M ARKETS .39 .17 .03 .61 .51 .49 .09 .33 .51 .31 .12 .12 .52 .24 .43 .14 .25 .31 .21 .36 .04 .25 8 .08 .45 .07 Offl. independent 7 .16 .47 Ads .91 6 .22 .57 .41 1 5 .08 .27 .25 .64 4 .13 .36 .19 .44 .19 3 .21 .95 .08 .20 .87 2 .08 .45 .95 .41 .41 Overall 1 .03 .11 .98 .29 .50 14 .47 .10 .89 Offl. provider 13 .05 .94 .21 .45 .23 12 .13 .58 .41 .46 Onl. provider 11 1 .55 Peers Onl. independent 10 .11 Offl. independent Journals Purchase 6 of higher-level segments 6.2 Results 119 Consumer segments 1 2 .21 1 4 5 6 7 8 9 .04 .40 .04 .06 .14 .16 10 11 12 .04 .16 .08 .07 .06 .07 13 .04 .04 .16 .05 .11 .16 .25 .19 .07 .09 .09 .12 .06 .05 .14 .10 .10 6 .17 .13 .10 .09 .09 .05 .07 .17 .10 7 .05 .06 .14 .18 .13 .03 .11 .25 .04 8 .06 .29 .07 .21 .11 .14 .10 3 .12 4 5 .32 .22 14 .08 .14 .25 2 Country segment 3 .12 .07 .06 .06 .04 Notes: Across the country segments, the largest probability and relative size is underlined, the second largest value is bold face. Consumer segments below .03 in a higher-level segment not shown. Table 6: Consumer Segment Distribution for Each Higher-Level Segment. Effects of Covariates As described, we included several values on consumer level in order to improve segmentation. In evaluating the effects of covariates, we followed the way suggested by Bijmolt et al. (2004). After the solution that minimized CAIC values was determined, we used this combination of higher-level and consumer segments and dropped each covariate once. In case the model statistics did not improve notably, we concluded that the respective covariate improves the estimation of segments significantly. All consumer covariates improved the model by considerably lowering the CAIC. To validate their influence we used Log-Likelihood difference tests, which were all significant at a .95 confidence level. The least effect was displayed by agreeableness (CAIC: 169,327.7) as the values approximate the full model (CAIC 168,116.5). The highest influence can be recognized for age (CAIC: 170,004.1) and gender (CAIC: 169,561.7). In sum, the models confirmed the usefulness of including socio-demographic, decisionmaking, and psychographic covariates for international segmentation. The largest 120 IV E MERGING M ARKETS consumer segments are displayed by three psychographic and socio-demographic covariates in Figure 8. We have proposed that the context critically determines consumer behavior, thus, we included contextual covariates to determine their usefulness on the formation of channel segments. In particular, we specified the countries’ PPP per capita, Internet penetration and living density as economic and geographic covariates and added cultural dimensions, namely individualism and uncertainty avoidance. Again, the covariates significantly improved the segmentation at a .95 confidence level when using Log-Likelihood difference tests. Especially leaving out cultural covariates displayed worse values as compared to the full model, namely uncertainty avoidance (CAIC: 168,765.3) and individualism (CAIC: 168,720.3). In sum, our proposed segmentation approach, in terms of the contextual embeddedness and the holistic model, considerably advances the accuracy and reliability of the international segmentation. The effect of uncertainty avoidance, individualism, and PPP is illustrated in Figure 9. 7 Discussion and implications Market segmentation presents a considerable challenge, particularly in an international context (Douglas and Craig, 2006). While HICs have yet attracted substantial research efforts, insights on EMs are so far sparse. Moreover, an international segmentation approach with HICs and EMs has not yet been developed. Our article conceptually derives and numerically tests a model for doing so. The results broadly confirm that the proposed requirements are necessary for a successful segmentation approach. We formed higher-level segments based on regional and income characteristics to reflect within-country heterogeneity (Burgess and Steenkamp, 2006; Sheth, 2011), which is highly actionable in terms of the very specific segments derived (e.g., Ter Hofstede et al., 2002). Although the class-specific analysis is superior to splitting on a regional basis, the proposition 7 Discussion and implications (a) (b) Notes: Only the segments with more than 6 % of the actual consumers shown. Figure 8: The Influence of (a) Psychographic and (b) Sociodemographic Variables on Consumer Segment Distribution. 121 122 IV E MERGING M ARKETS Figure 9: The Influence of Higher-level Covariates on Higher-level Segment Distribution. that high-income classes of EMs are consistently more similar to HICs’ consumers cannot be fully supported: The upper class of India, for instance, appears in one segment with several HICs. Similarly, the lower class of Germany is classified in one segment with several EMs; however, also the upper class of the US is registered into this higher level segment. Although this is counterintuitive, it may be explained when considering the development of usage patterns and of the industry (Burgess and Steenkamp, 2006). The lower class consumers in EMs might use the personal channel for buying financial services as they have not accommodated to using Internet for such purchases yet. This, however, is similar to the upper class in HICs, where personal contact is often used due to the better service. Thus, as consumer preferences regarding how to search and buy financial services are still developing in EMs, which suggests including the development of the specific industry as another variable. Although we specified the micro-level analysis based on classes, we solely asked consumers that already have Internet access, which attaches higher homogeneity to consumers worldwide. While this 7 Discussion and implications 123 constitutes a limitation in terms of omitting a specific restriction of consumer behavior, it also provides higher stability in terms of the extensive Internet growth rates in EMs. Depending on the time horizon and the distribution strategy of MNCs, which predominantly focus on online strategies, online consumers are likely to approximate the relevant respondents. After all, the segmentation is future-oriented by using an online sample. Additionally, EMs did not consistently show up in one segment which indicates that there is considerable heterogeneity between different EMs. This strongly advocates against considering EMs as homogeneously different from HICs, but rather indicates that scholars need to examine them on a case-by-case level. The notion of embeddedness and the holistic model was reflected by considering contextual factors and the high number of covariates. Their usefulness was clearly supported since all contextual variables consistently improved the segmentation. Although at first sight not all segments relate to each other, considering covariates explains the higher segments as illustrated by Figure 9. It is noteworthy that the numerical example provides a first step into EMs research, which has been strongly advocated by multiple scholars (e.g., Burgess and Steenkamp, 2006). In line with Sheth (2011), we relied on consumer behavior as to date other constructs miss a validation for EMs. Thereby, we enhance the understanding about international channel segments and their channel usage patterns. In recognizing that different segments exist in different countries, and that country segments are not as intuitive as expected, marketing practitioners may rethink current segmentation approaches. Equally, the applied covariates have yet been specified as valid for research on an international level. For instance, we used psychographic elements that have been suggested to be globally relevant by including the five personality traits into the segmentation (Burgess and Steenkamp, 2006). As a result, we were able to better fit the segmentation. Besides the theoretical input, also methodological contributions can be recognized. In the presented article multilevel, finite mixture modeling is applied 124 IV E MERGING M ARKETS (e.g., Bijmolt et al., 2004; Ter Hofstede et al., 1999), which we further extended by considering contextual information. In our example, the inclusion of covariates that are allowed to directly affect higher-level segments, ends in deriving a significantly better model which underlines their usefulness. In sum, our approach contributes to several fields of research. Primarily, by establishing the requirements of an international segmentation including EMs, we enhanced international segmentation practices to fit the distinct characteristics of EMs (Burgess and Steenkamp, 2006; Sheth, 2011). Methodologically, we see the presented results as first evidence for the relevance of country covariates for segmentation, in particular for EMs. Moreover, multichannel scholars find, to our knowledge, a first international classification that is based on consumer channel behavior. 7.1 Practical implications MNCs have yet acknowledged the potential of EMs. Since decades, they strive to expand their businesses beyond the boundaries of HICs to elude fierce competition in HICs and to exploit the extensive growth rates in EMs (Prahalad, 2004). Specifically, MNCs should determine global segments based on class-specific as well as geographical patterns, whereas using a "country-as-a-segment" strategy is inferior. However, we need to emphasize that treating all EMs equally should be reconsidered. To acknowledge that EMs are highly diverse is essential to establish a successful international marketing or internationalization strategy. One additional key issue becomes obvious when considering the results of our segmentation: Grouping countries according to continents is not effective. This has direct implications on the MNCs’ organization structure, which should reflect the markets’ heterogeneity. Predominantly, internal structures are grouped based on geographic proximity (i.e., PUMA’s organization is split into North America, Americas, Central Europe, Eastern Europe Middle East Africa, and Asia- Pacific), which is, according to our results, inferior. Further, a key question for MNCs that 7.2 Future research 125 strive to expand in direction of EMs is "How can interactions with consumers be arranged"? To the extent, our approach is highly valuable as our segmentation basis is considered as an essential pillar of every MNCs marketing strategy: The distribution of goods and services. MNCs can therefore gain crucial insights when expanding beyond the borders of HICs. Segmentation can be valued according to being identifiable, substantial, accessible, and actionable (Wedel and Kamakura, 1999). We postulated that the same criteria are necessary to value the covariates that assist in identifying segments. Viewed in this light, all of the aforementioned criteria can be considered satisfied by the factors and covariates employed in the presented study. Consumer channel behavior is a highly business-relevant behavior (e.g., Konus et al., 2008). In terms of stability, it is noteworthy that we collected data via an online survey. Despite this procedure’s drawbacks (i.e., reflecting the segment size of consumers with internet access only), considerable advantages are at hand. We propose that rather stable and future-oriented segmentation results are derived in the light of the twoor three-digit internet access growth rates in EMs. Although our data is constrained to the boundaries of the financial services sector, we claim to provide valuable insights also beyond the industry’s borders. Previous multichannel studies have shown notable parallels between the consumers’ behavior facing different products and services (e.g., Konus et al., 2008; Verhoef et al., 2007). That is, when being used to search online and purchase offline within one product category, similar behavior is likely for other products or services. Thus, our research entails information for international marketing practitioners, outreaching the financial services sector. 7.2 Future research The findings and ideas of this article can guide future studies. In the beginning, we split countries into three regions to detect within-country heterogeneity (e.g., Burgess and Steenkamp, 2006; Cui and Liu, 2000), which leaves space for finer- 126 IV E MERGING M ARKETS grained research. For instance, one might conduct research on a statewise level, which could give further insights about the geographic segment distribution. Then, we segmented based on consumers’ class membership, which displayed superior results. Future research might combine both classifications to derive even more specific results for unmasking the source of heterogeneity in EMs. Additionally, our sample misses EMs from Africa. Previous research has shown interesting findings for this continent (e.g., Steenkamp and Burgess, 2002), advocating the inclusion of African countries. Our methodology revised current multilevel finite mixture models by including contextual covariates. Particularly, we specified them equivalently to consumer covariates (Gupta and Chintagunta, 1994). Our approach showed to be useful in terms of model fit, but specific research dedicated at further testing concurrent approaches is necessary. For example, an interesting question is whether a two-step approach that first estimates on a consumer level, and subsequently forms higher-level segments with covariates, is superior to our approach. Finally, in terms of future research we recommend scholars to look beyond current segmentation practices. In our approach, we used a rather complex procedure with consumer data enriched by contextual information. However, in the light of the tremendous institutional influence and the contextual limitations (Sheth, 2011) that are prevalent in EMs, future research might also consider approaching segmentation in EMs from a completely different perspective. For instance, questions to be asked are: How close can international segmentation be that solely focuses on contextual data predict consumer behavior? Accordingly, is consumer data necessary for finding consumer segments in EMs? We conclude by stating that, nonetheless the limitations, our approach shows especially one key finding: International marketing scholars, as well as MNCs, need to strive for a highly distinguished view on EMs. Just classifying EMs as such, while leaving out country- and within-country-specific circumstances, fails to provide a complete picture. A Descriptive statistics Search channels Country Australia Austria Belgium Brazil China Czech Republic France Germany India Japan Korea Malaysia Mexico Netherlands Poland Singapore Spain Sweden UK USA Purchase channels Online Offline Additional Online Offline N Provider Indepen- Forum Provider Indepen Peers Ads Journals Provider Indepen Provider Independent -dent -dent dent 654 612 634 1,406 1,372 757 697 1,313 1,316 1,378 707 713 672 597 664 679 675 685 1,281 1,427 .55 .40 .51 .51 .62 .42 .52 .48 .27 .50 .47 .38 .60 .69 .32 .32 .58 .72 .60 .41 .40 .33 .21 .18 .29 .40 .37 .52 .22 .51 .23 .15 .12 .25 .42 .22 .26 .49 .70 .38 .06 .08 .08 .15 .23 .15 .09 .12 .14 .05 .15 .21 .06 .09 .25 .16 .15 .12 .09 .08 .53 .63 .61 .70 .64 .58 .72 .51 .68 .52 .66 .73 .80 .44 .63 .66 .64 .54 .28 .51 .29 .58 .51 .37 .40 .41 .21 .41 .46 .28 .32 .38 .41 .35 .35 .53 .44 .20 .28 .48 .41 .44 .47 .44 .40 .58 .36 .38 .52 .46 .53 .64 .46 .44 .53 .62 .46 .38 .34 .47 .26 .06 .09 .17 .07 .06 .11 .06 .29 .18 .20 .16 .13 .10 .10 .11 .11 .07 .20 .14 .07 .11 .11 .12 .03 .15 .12 .17 .14 .09 .06 .08 .12 .11 .13 .04 .07 .13 .07 .08 .26 .05 .11 .16 .20 .16 .14 .15 .08 .20 .19 .07 .12 .26 .14 .06 .19 .29 .33 .19 .08 .07 .04 .04 .06 .08 .05 .17 .06 .24 .07 .04 .02 .11 .06 .04 .07 .15 .27 .10 .52 .54 .54 .64 .55 .50 .73 .45 .56 .43 .59 .69 .65 .40 .58 .59 .53 .51 .26 .43 .16 .35 .31 .16 .19 .26 .09 .22 .29 .13 .15 .20 .20 .22 .22 .30 .20 .05 .14 .27 Total 18,239 .49 .35 .13 .59 .38 .46 .14 .10 .17 .10 .52 .20 A Descriptive statistics Appendices Notes: EMs in bold, independent = not directly related to the company bought from. Ads = advertisements. 127 128 B IV E MERGING M ARKETS Geographical and class-specific classification schemes Geographical classification based on: • China: We used the article of Cui and Lui (2000) that split China in seven regions. However, we further simplified the classification and only accounted for three regions: North (formerly North-West, North and North-East), East, and South (formerly South-West, South and Central) China. • India: Similarly, India was split into three parts based on the classification of Husain, Dutta, and Ghosh (2011). Hence, we classified India in South, North (formerly North, Central and East), and West India. We acknowledge splitting both countries into three geographic regions as reasonable, as the biggest difference in China and India prevail between northern and southern parts (Douglas and Craig, 2011). • Brazil: Brazil was split in three parts, North (reaching to Golás in the south), south (reaching up to Minas Gerais in the north) and the metropolitan area (Sao Paolo and Rio de Janeiro). Note: To also investigate potential heterogeneity of HICs, we also split Germany, Japan, and USA into regional segments. • Japan: Japan was split into the Northern, Southern part. Further, the district Kanto (the region around Tokyo) was separated. • USA: The USA was split into West, Central, and East. Central was formed by Alabama, Arkansas, Illinois, Indiana, Iowa, Kansas, Kentucky, Louisiana, Michigan, Minnesota, Mississippi, Missouri, Nebraska, Ohio, Oklahoma, North and South Dakota, Tennessee, Texas and Wisconsin. All states Western to this were classified as West, all Eastern to this as East. • Germany: Germany was divided into the Western part (former Federal Republic of Germany) and the Eastern part (former German Democratic Republic). Income classification were established as follows: • Each country used for the geographical classification was split into three parts, the upper class, the medium and the lower class. • To mitigate calibration equivalence, we based the development of the classes on income. Up front distributing the questionnaires, we changed the levels according to the countries’ income distribution. In the analysis, we rechecked this by classifying the 20 percent of the consumers with the highest income as the upper class. Similarly, the 20 percent of the consumers with the lowest income as the lower class. B IBLIOGRAPHY 129 Bibliography Agarwal, J., N. K. Malhotra, and R. N. Bolton, 2010. 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Findings indicate that the status quo bias theory is valuable to determine consumers’ biased perceptions as well as biased behavior in terms of the reluctance to research shopping. These two types are investigated via the channels employed for searching and overall evaluations of the search phase. In doing so, this article contributes to the multichannel literature by substantiating knowledge about research shopping and adding to the knowledge about the difference among multichannel and single-channel consumers. Additionally, it strengthens the status quo bias theory as theoretical underpinning in marketing literature.6 Keywords: Research shopping, Status quo bias theory, Biased channel perceptions, Biased channel choice, Multichannel search behavior 6 T. Schlager. This paper is in preparation for submission to the "International Journal of Research in Marketing". 1 Introduction 1 141 Introduction More and more consumers are taking advantage of the broad variety of available channels. Accordingly, an increasing number of consumers uses different channels to search and purchase products or services. For instance, a recent study of Google (2009) illustrates that 40 percent to 60 percent of German consumers, depending on the product, switch channels between the search and the purchase. In academic research, this phenomenon, described as "the propensity of consumers to research the product in one channel [. . . ], and then purchase it through another channel", has been dubbed research shopping (Verhoef et al., 2007, p. 129). In fact, research shopping has significant implications for companies. Consumers tend to be less loyal to firms when switching channels within the purchase process (Chiu et al., 2011; Nunes and Cespedes, 2003), however, multichannel consumers also tend to spend more money (e.g., Kumar and Venkatesan, 2005; Kuswaha and Shankar, 2005; Myers et al., 2004; Neslin et al., 2006; Venkatesan et al., 2007) which directly relates to a company’s revenues. Therefore, for the sake of business success, companies are highly challenged to manage the channels offered throughout the consumers’ buying process (Geyskens et al., 2002; Konus et al., 2008). A seminal article on research shopping comes from Verhoef et al. (2007), investigating the phenomenon by means of three mechanisms: Attribute-based decision making, channel lock-in, and channel synergies. However, the framework calls for further investigations concerning at least two shortcomings. First, the possibility of searching in multiple channels is precluded although this is highly relevant since most of the consumers yet apply more than one channel for searching (Kopalle et al., 2009; Pauwels et al., 2011; Shankar et al., 2011; Yahoo! Inc. and OMD, 2006). Second, the truly underlying decision making processes, moderators and mediators, have not been clarified which presents a tremendous opportunity (Grewal and Levy, 2007). Consistently, calls for further research on consumer 142 V R ESEARCH S HOPPING shopping behavior and research shopping in particular are loudening (Chiu et al., 2011; Kopalle et al., 2009; Pauwels et al., 2011; Pentina et al., 2009). To deepen our understanding of research shopping, the article applies the status quo bias theory (Kahneman et al., 1991; Samuelson and Zeckhauser, 1988). This theory would propose that consumers tend to stick with the search channel rather than switching to an alternative even when the alternative is perceived as superior. Allowing for multiple search channels, research shopping is considered as switching away from the most important search channel for the final purchase, thereby exploiting this channel for the information search only. Hence, the relevant question is reformulated as: Will a consumer stick to or leave the search channel that provides the most important information for the final purchase? More specifically, two ways how the status quo bias affects research shopping are suggested. First, a bias exists when consumers tend to be reluctant to research shopping although higher utility for purchasing is perceived for an alternative channel (directly biased purchase behavior). Second, consumers are biased when they systematically perceive less utility of the alternative channel for purchasing solely due to not representing the status quo channel (Falk et al., 2007; Yen and Chuang, 2008). Accordingly, since these perceptions are assumed to determine behavior, research shopping is mitigated (biased perceptions, indirectly biased behavior). The article makes following contributions. 1. It adds to the multichannel literature by untangling the process underlying research shopping. Thereby, so far neglected mechanisms are revealed as for instance the role of overall evaluations of the search phase. 2. The article contributes to the discussion concerning the special role of multichannel customers since the difference between multichannel and single-channel search consumer behavior is spotlighted. 3. The article adds knowledge regarding the rarely applied status quo bias theory by projecting its thoughts to a marketing setting. 2 Conceptual model development 143 For realizing these contributions, this article is structured as follows: A conceptual model is developed outlining potential biases in research shopping. Second, hypotheses regarding nonlinear functions and the influence of channels used in the search phase are established. Adding to this, the influence of consumers’ overall evaluations of the search phase on research shopping is delineated. Next, the hypotheses are empirically tested by means of a global consumer study and a laboratory experiment. Finally, managerial and theoretical implications as well as further avenues for research are outlined. 2 2.1 Conceptual model development Decision-making towards research shopping Consumers have multiple choices regarding what channel to use in each phase of the buying process. In case the consumer switches channels between the search and purchase phase research shopping is present. Now assume that, contrary to Verhoef et al. (2007), multiple channels can be used for searching. For instance, one channel is central to information acquisition; however, a second channel is used to complement the information at hand. Thus, considering this extension to the article of Verhoef et al., two search situations are given, one for a single channel search and the extension for a multichannel search. For clarity, let the most important search channel be the primary search channel and the concurrent channel be the alternative search channel. Following economic theory, when confronted with multiple alternatives, consumers pick the option that promises the highest utility (Kahnemann and Tversky, 1979). In the described situation, channel literature suggests that the utility of using one channel depends on the perception of the alternative channel (Chiu et al., 2011). Positive perceptions of an alternative channel decrease the intention to use the primary search channel (Balasubramanian et al., 2005; Montoya-Weiss et al., 144 V R ESEARCH S HOPPING 2003). Thus, it is rather the relative evaluation of the utilities of the primary and alternative search channel for making the purchase that is decisive for research shopping. 2.2 Decision-making from a status quo bias perspective A significant part of the literature has shown instances where behavior deviates from what traditional economic theory predicts (e.g., Kahneman et al., 1991). More specifically, the assumption that the expected utility is the sole determinant of consumer behavior does not necessarily hold true (Hershey et al., 1982). A notable exception is presented by the status quo bias theory (e.g., Samuelson and Zeckhauser, 1988), which is described as the "propensity of a decision-maker to choose an option because it is the status quo, the default option" (Dean, 2008, p. 4). From this perspective, consumers display a higher tendency to remain with the primary search channel throughout the purchase process. They will only switch channels to make a purchase when the alternative search channel is perceived better by far as in this case consumers have sufficient motive for research shopping (Falk et al., 2007; Gal, 2006). This outlines the first facet suggested for the status quo bias: Consumers are reluctant to research shopping although higher utility is derived from purchasing in the alternative search channel (biased behavior). Besides the directly biased behavior, consumers may also be biased in their perceptions. For instance, Falk et al. (2007) describe the status quo bias as outcome of systematically biased perceptions of a new self-service channel since these drive the probability to keep the status quo channel. Thus, it is suggested that consumers perceive higher utility of the primary search channel for making the purchase solely due to representing the status quo, while perceiving less utility of alternative search channel. This describes the second type of the status quo bias: Consumers indirectly avoid research shopping since the perceptions of the primary and alternative search channel are systematically altered (biased perception). In sum, this paper suggests two mechanisms of how the status quo bias theory 3 Hypotheses development 145 applies to research shopping. First, consumers have the propensity to remain with the search channel for purchasing, even if the alternative channel is evaluated as superior. Second, the perceptions of the channels are systematically influenced by the status quo option; the primary search channel is evaluated more favorably for purchasing, whereas the alternative channel is evaluated worse resulting in a lower probability of research shopping (see Figure 10). Figure 10: Conceptual Model: The two Potential Status Quo Biases in Research Shopping. 3 3.1 Hypotheses development Biased purchase behavior In the conceptual model, it is suggested that the explanatory power of economic theory for research shopping is limited when a clearly defined status quo exists. In the following, it will be relied on the difference between consumers who use one channel compared to those who use multiple channels for searching (e.g., Neslin et al., 2006). Specifically, it is assumed that consumers who solely use a single channel for searching are prone to the status quo bias since a clear status quo option exists (the primary and in this situation the only search channel), whereas multichannel consumers are not since they cannot stick with both channels for 146 V R ESEARCH S HOPPING making the purchase. More precisely, their status quo is the use of both channels, however, they need to make a choice for making the purchase. Accordingly, two situations with different utilities derived from research shopping are identified and by comparing both consumer types, the status quo bias is isolated and its magnitude determined. Single-channel search behavior In the first situation, a consumer relies on one channel for searching which is suggested to be equivalent to the status quo. As Verhoef et al. (2007) and Konus et al. (2008) suggest, despite several attributes determining the utility across several phases of the purchasing process, some are phase-specific. For instance, attributes, such as the ease of comparing different options are highly valued when searching, while others, such as the effort for buying are rather related to purchasing. Although the consumer cannot fully foresee the utility of buying with the primary search channel, even less can be said about the alternative search channel. Correspondingly, when searching in one channel the consumer knows less about the specific utility of the alternative search channel for purchasing as the consumer did not experience the alternative search channel in the search phase. This introduces uncertainty toward purchasing with the alternative search channel, which is acknowledged as trigger of the status quo bias (e.g., Fernandez and Rodrik, 1991; Hartman et al., 1991; Ortoleva, 2008). For instance, Sääksjärvi and Samiee (2007) examined the adoption of cyber brands and argued that consumers tend to buy brands that were more familiar due to the status quo bias. Similarly, Ciccione (2004) found that uncertainty concerning an outcome negatively influences a government’s willingness to implement a reform, representing a status quo bias. What is more, literature has yet acknowledged a reflective facet of the status quo bias. That is, using only one search channel results in a lower perceived uncertainty of the primary search channel. For example, Roca et al. (2006) tested whether or not the status quo is preserved in ambiguous situations. Using an experimental procedure participants were introduced to a decision with 3.1 Biased purchase behavior 147 a vague outcome as the status quo and a clearly defined outcome as the alternative. As most participants retained their current status, it was concluded that the bias decreases the perceived uncertainty towards the status quo. The above argumentation implies that the difference in the perceived uncertainty between the primary and the alternative search channel will be large for consumers who only use one search channel. Accordingly, the propensity for using the primary search channel for purchasing increases (Bewley, 2002; Ortoleva, 2008; Samuelson and Zeckhauser, 1988). Even when the perceived utility of the alternative search channel is higher for purchasing than the utility of the primary search channel, the primary channel is given a higher preference. Consequently, it is proposed that consumers tend to avoid research shopping when they have only used one channel for searching favoring the status quo bias. Multichannel search behavior Situation two specifies a multichannel behavioral pattern during the search phase. Although a primary search channel is specified, it is supposed that no status quo bias is present since a second, alternative search channel is used for collecting information about the product. Based on partially overlapping features of channels throughout the search and purchase phase (e.g., Konus et al., 2008; Verhoef et al., 2007), consumers will have an initial understanding of the potential experience of making the purchase in the alternative channel. Accordingly, uncertainty about the alternative channel is considerably lower than in situation 1; consumers can evaluate both channels and pick the superior option that determines the utility of research shopping. As such, it is suggested that the low uncertainty towards the alternative channel eliminates the status quo bias and that the search channel that imposes the higher utility for purchasing is chosen. For instance, when consumers predominantly search online, while partly using the offline channel to complement information, they will feel less uncertain to buy with the offline channel. Based on the absence of a status quo bias for multichannel search customers, the first hypotheses are framed: 148 V R ESEARCH S HOPPING H 1a. The difference in perceived attributes of the alternative and the primary search channel for making the purchase determines the probability of research shopping. H 1b. Using multiple channels in the search process increases the probability of research shopping. After reflecting the peculiarities of both situations, the status quo bias calls for further investigation especially concerning how the bias fully unfolds its magnitude. Specifically, literature has argued that consumers who search in one channel need to overcome the barrier induced by a status quo bias (Falk et al., 2007; Gal, 2006), whereas consumers that search in multiple channels are supposed to switch the primary search channel for making the purchase when perceiving the alternative channel superior to the primary search channel. Registering both situations, it is suggested that the difference in the utility of research shopping between using multiple and single channels during the search phase is largest when consumers expect a slightly higher utility from the alternative search channel than from the primary search channel; multichannel search consumers would immediately switch when expecting the alternative channel to be superior for buying. Accordingly, the difference between using multiple channels or a single channel in the search phase will be smaller at the extreme of the relative evaluation. Further, it is suggested that the curve will peak beyond the point where the alternative search channel is perceived as equal to the primary search channel, since both remain with the primary search channel when perceiving it better for making the purchase. As a result, H 1c-d are suggested: H 1c. The curve reflecting the difference in the probabilities of research shopping between multichannel and single-channel consumers is inversely U-shaped. H 1d. The difference in probability curve will peak beyond the point where equally perceiving both channels for making the purchase. 3.2 Biased perceptions of channels for purchasing 3.2 Biased perceptions of channels for purchasing 149 In the conceptual model altered perceptions of the primary and the alternative search channel were suggested to present the second type of status quo bias. To shed light on this, the single channel search situation, which is suggested to be necessary for a status quo bias, is further investigated. In this course, literature suggests that once a status quo is defined, it is taken as a reference (Anderson, 2003; Falk et al., 2007). That is, every upcoming alternative is evaluated in the light of the status quo. When the current state is perceived as particularly favorable, the absolute magnitude of losses is larger since the well-perceived state is at stake (e.g., Anderson, 2003; Falk et al., 2007; Yen and Chuang, 2008). For instance, Yen and Chuang (2008) argued that "happy individuals who feel confident in following a ’business as usual’ procedure should be more likely to select the status quo option" (p. 524). In a series of experiments, they found support for this, while negative emotions mitigated keeping the status quo. Martin et al. (1993) supports this notion showing that consumers who report negative evaluations rather rely on systematic processing, while positive evaluations enhance heuristic information processing. Hence, when negatively evaluating the primary search channel, consumers more thoroughly re-evaluate both channels for making the purchase, whereas a positive evaluation may even exclude the alternative search channel from being considered for purchasing. Correspondingly, it is suggested that favorable evaluations of the search phase directly enhance the propensity to maintain the status quo, while unfavorable evaluations increase the probability of research shopping. In channel literature, a main indicator of positive (and negative) evaluations is the consumers’ level of satisfaction (e.g., Geyskens et al., 1999; Montoya-Weiss et al., 2003; Shankar et al., 2003; Van Birgelen et al., 2006). Moreover, satisfaction has yet been recognized as trigger of the status quo bias (Falk et al., 2007). Thus, consumer satisfaction with the search phase will systematically alter the reference 150 V R ESEARCH S HOPPING point that provokes the status quo bias. Hence, the following hypothesis can be established: H 2a. Satisfaction with the search channel decreases the probability of research shopping. Besides these initial suggestions, the status quo bias theory explicitly suggests irrational elements (e.g., Kahneman et al., 1991). In line, unrelatedly altered perceptions are one central indication for the presence of a status quo bias (Baron and Ritov, 1994). These are present when the consumers’ perceptions of an alternative channel’s attributes are influenced by the overall evaluation with the primary channel for searching. A trigger of the status quo that alters consumers’ perceptions is loss aversion. Loss aversion delineates that consumers overemphasize potential losses compared to gains (e.g., Bostrom and Ord, 2006; Kahneman et al., 1991; Rubaltelli et al., 2005; Yen and Chuang, 2008). As a result of loss aversion, subjective certainty with the status quo increases (Yen and Chuang, 2008). In the context of research shopping, this implies that loss aversion concerning the current state decreases, resulting in better-perceived attributes of the primary search channel. For the alternative search channel, however, loss aversion leads to even worse perceived attributes for the alternative channel. In line, Falk et al. (2007) suggested that the intention to adapt an unknown channel is primarily influenced by the evaluation of currently used channels. Studying offline-banking customers they discovered a negative influence of satisfaction with the offline channel on the perceptions of the newly introduced self-service channel. Perceptions were found to be biased which in turn lowered the usage intentions for the self-service channel. In particular, it is suggested that consumers tend to systematically perceive the alternative search channel’s attributes for purchasing as worse, while they more positively evaluate the primary search channel’s attributes. To sum up, using a well-perceived current state has been noticed as a decisive facet in provoking a status quo bias since larger potential losses are perceived (e.g., Falk et al., 2007; Yen and Chuang, 2008). Correspondingly, it is proposed that 3.2 Biased perceptions of channels for purchasing 151 both channels’ attributes are misperceived in favor of the primary search channel when a clearly defined status quo exists (e.g., Kim and Kankanhalli, 2009). As such, these evaluations lower the tendency to switch the channel for making the purchase. It is noteworthy that the suggested mechanism is substantially different from the lock-in effect, which specifies the superiority of a specific combination of channels (e.g., Verhoef et al., 2007) or switching costs (e.g., Shankar et al., 2003) since both mechanisms would not imply misperceptions of the alternative channel (Falk et al., 2007). Following three hypotheses are established: H 2b. The perceived attributes of the search channels for purchasing partially mediate the influence of satisfaction with the search channel on the probability of research shopping. H 2c. Satisfaction with the search channel negatively influences the perceived attributes of the alternative channel for purchasing. H 2d. Satisfaction with the search channel positively influences the perceived attributes of the primary channel for purchasing. To sum up, two types of status quo bias are suggested. First, biased behavior is investigated by comparing the combination of channels used for searching. In case two channels are used, it is suggested that consumers display unbiased behavior. Contrary, consumers are suggested to be reluctant to research shopping when only one channel was applied for searching, which is in accordance with the status quo bias theory (H1a-c). Second, consumers’ perceptions of the search channels used for purchasing are biased when being satisfied with the search phase (H2a-d). The central hypotheses are summarized in Figure 11. 152 V R ESEARCH S HOPPING Notes: Attalternative are the perceived attributes of the alternative search channel for making the purchase. Att primary are the perceived attributes of the primary search channel for making the purchase. Figure 11: The Central Hypotheses concerning the Effects of the Status Quo Bias Theory on Research Shopping. 4 Analysis and findings of Study 1 and Study 2 Both studies consider a simplified 2 x 2 matrix of research shopping. That is, research shopping from an offline to an online channel and vice versa is investigated. In particular, Study 1 examines how the search channels influence research shopping (H1a-d) via a large-scale survey to provide evidence for the proposed non-linear functions. Study 2 extends these findings by capturing the influence of positive evaluations of the search phase on research shopping (H2a-d). To isolate the effect and to provide initial causal inference, a laboratory experiment was designed. 4.1 Study 1: Method 4.1 Study 1: Method 153 Study overview and design For the large-scale study, a survey was developed asking participants about their buying processes regarding financial services. Draft versions were thoroughly discussed with industry executives in the participating countries to gain insights regarding country-specific issues. Additionally, a pretest with 589 U.S. respondents was conducted. Following the participants’ comments, scales and items were adapted. After the survey was sent out for translation into thirteen languages, it was discussed at least twice with contact persons of each country to determine whether fine-grained culture or language-specific differences posed a problem (Burgess and Steenkamp, 2006). To distribute the questionnaire, panels representative for each participating country were used. The questionnaire was accompanied with a cover page that explained the purpose of the study. After initial questions, the channels were described to facilitate respondents in correctly classifying search and purchase channels. The procedure provided 16,276 useful questionnaires from five continents (Asia, Australia, Europe, North America, and South America). Sample characteristics are distributed as follows: Mean age was 39.4 (S.D. = 11.66); 48.56 percent were female and 51.54 percent male; most respondents graduated from a university (58.6 %), a third (34.4 %) had a high-school degree, and the rest (7.0 %) had not completed any degree. In sum, 9,760 persons used the offline channel for searching as primary search channel, while 6,516 chose the online option. However, 11,611 participants took the offline choice for buying. Only 4,665 made their purchase via an online channel. Measurement Consumers were directly asked to specify the channels they used for searching, as well as their primary search channel. To validate that the primary channel was dominantly used, consumers were required to disclose the amount of time spent in each channel. If a consumer spent twice as much time in the primary search 154 V R ESEARCH S HOPPING channel as compared to the alternative, it was concluded that an actual primary channel was indicated. Moreover, the time spent was used as a covariate. To derive the binary outcome variable, research shopping, participants were asked to specify the purchase channel. To evaluate the channels for buying ten attributes developed in previous literature were used; to fit the context minor changes were made. Factor analyses condensed the items to three factors, namely buying perceived usefulness, perceived risk, and buying perceived ease of use; the respective sources of the items are displayed in Appendix A. All channel attributes were measured using semantic differentials without predetermined scales (e.g., for the item How much effort is searching for insurance via channel x? scale items reach from a lot of effort to no effort at all). Advantages of this method include the high face validity (Hawkins et al., 1974; Nunnally, 1978) and its simplicity (Osgood et al., 1957). For the analysis, the scale was partitioned into six equal intervals. To isolate the effect several control variables were used. Experience was assessed as a binary variable checking whether consumers recently bought a financial service. Additionally, a binary variable describing the type of product was used to measure its complexity, the relative price advantage of a channel as a relative value for money on a six-point scale, and a binary variable was used for whether an online or offline search channel was used. Finally, gender and age were controlled. 4.2 Study 1: Analysis Study 1: Test of validities and reliability Confirmatory factor analysis (CFA), based on offline and online channels, was employed to condense the items to factors and to assess their unidimensionality, as well as their validity. The results were verified by the commonly used fitindices except the c 2 which would be inflated due to the extensive sample size (Jöreskog, 1969). They indicated that the data fit the model well: The standardized loadings were high and significant (see Appendix A), ranging from .54 to .85 (a < .001 level), and in conjunction with a battery of fit-indices the model fit was 4.2 Study 1: Analysis 155 deemed to be acceptable. The comparative fit index [CFI] is .984; Tucker-Lewis index [TLI] is .976; incremental fit index [IFI] is .984; root mean square error of approximation [RMSEA] is .039. This exceeds general recommendations (e.g., Hu and Bentler 1999); in line with the average variance extracted, convergent validity was achieved. Discriminant validity was examined by the analysis suggested by Anderson and Gerbing (1988), assessing whether the measurement error-corrected correlation parameters between the constructs are significantly different from 1.0. This analysis supported that discriminant validity was given. Cronbach’s a scores (Bagozzi and Yi, 1988) for all measurement scales indicate sufficient reliability. Even though the discriminant validity is indicated by the results, and hence multicollinearity is an unlikely problem (Grewal et al., 2004), variance inflation factors (VIF) were calculated (see Table 7). The highest value was reported for age (7.36), whereas the average VIF was 2.81 confirming that multicollinearity does not pose a problem. For further analyses the factors’ items were averaged. 156 VIF Mean SE Age 7.36 39.41 11.66 Age Gender Expe- Com- rience plexity Price .51 .5 .04 *** Experience 1.88 .42 .49 .19 *** -.02 Product complexity 1.68 .38 .49 Price 1.84 -.86 0 Search channel (off-, online) 2.45 .4 .49 -.04 *** .09 *** .04 *** .09 *** .25 *** Search channels used 2.01 .53 .5 -.02 -.02 * * .01 -.07 *** .02 ** 0 Time spent for search (%) 5.92 51.43 19.17 .03 *** -.01 -.01 1.81 -.09 *** .04 *** -.01 2.26 Buying Ease 1.16 2.1 -.32 PU Buying Buying Risk EOU 1 -.24 *** 0 Buying Risk 2.19 1.13 Time spent Buying 1 * .01 -.76 # Search 1 Gender 2.01 Buying Usefulness 2.37 Search channel channel(s) used searching .09 *** -.04 *** -.06 *** -.01 1 0 -.02 1 1 * .08 *** -.03 .03 *** -.12 *** -.02 ** 1 ** -.05 .04 *** .56 *** .47 *** .05 *** 1 *** -.13 *** *** -.69 *** 0 -.04 *** -.51 *** -.51 *** -.05 *** 0 -.04 *** .26 *** -.04 *** .08 *** -.09 Table 7: Variance Inflation Factors and Pearson Correlations. 1 1 *** .29 *** -.19 *** 1 V R ESEARCH S HOPPING Notes: + p < 0.10, * p < 0.05, ** p < 0.01, *** p < 0.001. Correlations of orthogonalized factors shown (as used in regression). .1 4.2 Study 1: Analysis 157 Study 1: Estimation procedure / results The probability of the binary outcome (i.e., research shopping) was estimated using a random effect logit model. Let rsic be a binary variable, specifying if research shopping is present, rsic = 1, or not, rsic = 0, for a consumer i using a set of search channels c (c = 1 when using a single search channel, otherwise c = 2). The relative utility related to research shopping is specified as latent variable, rs⇤ic . This is denoted as follows: 8 < 1 if rsic : 0 if rs⇤ic 0 rs⇤ic < 0 , i = 1 , ..., n (4) Four groups of variables reflect and isolate the patterns described by the conceptual model: Consumer, product as well as search phase-specific characteristics, and the relative evaluation of the perceived attributes of the search channels for making the purchase. We can denote the relationship between these four groups and the latent variable as rs⇤ic = d 1,...,B bic + b 1 PRODic + b 2 T IMEic + b 3CHANNELic K V +b 4VALUEic + Â Â b5kv (aick k=1 v=1 where (2) pick )v + eic⇤ + hc (5) 158 V R ESEARCH S HOPPING d 1,...,B = {d 1 , ... , d B }, or coefficients that capture the effect of consumer covariates, bic = {1 b B}, or consumer covariates (age, gender, experience), PRODic = the product type purchased (complex vs. incomplex), T IME ic = the time spent in the primary search channel during the search phase, CHANNELic = the search channel (online / offline), VALUE ic = the relative value for money expected in a channel, k = {1 k K}, are various channel dimensions for buying (i.e., usefulness), v = {1 v V}, or the degree of polynomial used (i.e., up to the third), pic = the primary search channel, aic = the alternative search channel, eic⇤ = the error (assumed to be logistically distributed), and (2) hc = the random intercept for the number of search channels used. As coupling function, the presented model is specified as a random effects logit function of the latent underlying variable derived from a channel for buying. Results broadly confirm the model specified to explain research shopping. The random intercept model for the search situation was significantly superior when including all polynomials (Dc 2 = 43.31; p < .001). Additionally, a multilevel random intercept model for consumers was tested which, however, did not significantly improve the model (Dc 2 = .02; p = .987). For researching the functional relationship between the factors determining the channels attractiveness and for mitigating multicollinearity issues, orthogonalized polynomials were employed (Kleinbaum et al., 1998, p. 293). The results are displayed in model 3 to model 5 (with subsequently testing the nonlinear effects against model 2, see Table 8); all displayed significant improvement. It was concluded that allowing for nonlinear effects significantly improved the model, also shown in the full model (with all 4.2 Study 1: Analysis 159 polynomials included). All factors show high significance for explaining research shopping. Specifically, buying perceived usefulness yields the highest impact among the factors (b = .453, p < .001). Similarly, perceived risk of buying significantly decreases the probability of switching channels between searching and buying (b = -.212, p < .001). The factor with the least influence is the perceived ease of buying of a channel (b = .127, p < .001). In sum, hypothesis H1a was broadly supported. To interpret the effect of using multiple against a single channel for searching (H1b-H1d) simulation was used (Zelner, 2009). In particular, the posterior means of the predicted probabilities of research shopping were simulated for both situations varying the three explanatory variables (perceived usefulness, perceived risk, and perceived ease of use), all of the other variables held at their observed values (Van Everdingen et al., 2011). In a similar vein, the difference in the probability of research shopping between both situations was checked. The results confirm that using multiple channels within the search phase positively influences the probability of research shopping, offering support for H1b. For buying perceived usefulness, perceived risk, and perceived ease of use (differentiated by offline and online search) they are displayed in Figure 12, which is equivalent to the visualization of Van Nierop et al. (2008). When searching offline, no inverse U-shaped curve was found for perceived usefulness and perceived risk since the curve did not decrease at the extremes of the scale. However, for perceived ease of use the curve yielded an inverse U-shaped form. For searching online the inversely U-shaped was supported for all three explanatory variables. The effect of using two channels, instead of one, has the highest influence when the alternative search channel is evaluated as slightly better than the primary search channel. When the attributes of the alternative channel for buying are perceived better by far, consumers switch channels for purchasing, regardless of the applied search channels. Thus, H1c and H1d were partially confirmed. 160 Model (1) Model (2) Model (3) Model (4) Model (5) Full model Single search Multi search Covariates only No nonlinearities Polynomials usefulness Polynomials risk Polynomials ease All polynomials All polynomials All polynomials b p Age -.000 SE (.002) Gender -.053 b p .002 b p SE b p .002 (.002) .002 (.045) -.042 SE (.002) b .002 SE (.002) b p .002 b p SE b p SE .001 (.003) .003 (.003) (.045) -.118 (.073) .018 (.058) -.036 (.047) -.089 + (.047) -.093 * (.047) -.094 * (.048) -.149 * (.076) -.045 (.062) Product complexity -.132 ** (.046) -.135 ** (.047) -.135 ** (.047) -.134 ** (.047) -.133 ** (.047) -.130 ** (.048) -.235 ** (.076) -.047 (.062) .075 *** (.014) Searchchannel (off-, online) 2.003 *** (.048) 1.556 *** (.054) 1.537 *** (.055) 1.576 *** (.055) 1.551 *** (.054) 1.563 *** (.055) 1.290 *** (.092) 1.708 *** (.069) Time spent in search (%) -.014 *** (.001) -.013 *** (.001) -.013 *** (.001) -.013 *** (.001) -.013 *** (.001) -.013 *** (.001) -.009 *** (.002) -.016 *** (.002) DBuyingUse f ulness .073 *** (.014) .488 *** (.035) DBuyingRisk DBuyingEase .461 *** (.039) -.231 *** (.033) -.231 *** (.033) .112 *** (.026) DBuyinguse f ulness2 DBuyingUse f ulness3 .112 *** (.026) .038 (.030) -.081 ** .074 *** (.014) (.045) -.044 SE (.002) (.045) .227 *** (.012) (.045) -.046 p Experience -.088 + (.046) -.089 + (.047) -.090 + Price (.044) -.039 SE (.002) .492 *** (.035) .072 *** (.014) .488 *** (.035) .453 *** (.041) .082 *** (.022) .391 *** (.064) .069 *** (.018) .496 *** (.053) -.223 *** (.037) -.232 *** (.033) -.212 *** (.038) -.282 *** (.064) -.174 *** (.048) .114 *** (.026) .121 *** (.027) (.027) DBuyingRisk2 DBuyingRisk3 .075 *** (.014) .127 *** (.027) .186 *** (.042) .082 * (.036) .061 + (.034) .076 .046 (.054) (.044) -.095 *** (.028) -.083 + (.045) -.105 ** (.036) .012 (.028) .031 -.053 * (.025) DBuyingEase2 DBuyingEase3 (.031) -.005 (.052) .047 (.039) -.075 ** (.026) -.084 * (.042) -.069 * (.034) -.107 *** (.026) -.122 *** (.027) -.123 ** (.043) -.109 ** (.036) -.033 Constant -1.545 *** (.346) -1.729 *** (.340) -1.723 *** (.341) Intercept -.761 *** (.502) -.785 *** (.503) -.783 *** (.503) (.026) -.028 (.026) -.047 (.041) -.023 (.035) -1.733 *** (.340) -1.753 *** (.338) -1.744 *** (.338) -2.030 *** (.171) -1.355 *** (.141) -.785 *** (.503) -.792 *** (.502) -.792 *** (.503) 16,276 16,276 16,276 16,276 16,276 16,276 a 7,622 a 8,654 AIC c2 13199.198 12701.311 12696.498 12698.763 12684.310 12669.999 5148.946 7503.000 2474.031 2650.921 2684.898 2646.711 2655.532 2703.289 862.489 1861.979 LL -6590.599 -6338.655 -6334.249 -6335.382 -6328.155 -6317.000 -2556.473 -3733.500 LL comparison -6804.952 -6534.276 -6530.177 -6530.413 -6520.447 -6508.402 a a - 508.89*** 8.81* 6.55* 21.00*** 43.31*** a a LR test base model Notes: Unstandardized estimates shown. + p < 0.10, * p < 0.05, ** p < 0.01, *** p < 0.001. a) No random intercepts used since the sample was split according to the specific search channels used. Table 8: Results of the Binary Logistic Random-Intercepts Regression. V R ESEARCH S HOPPING N 4.2 Study 1: Analysis 161 Notes: The blue line indicates the probability of research shopping when using multiple channels for for searching. The green line indicates the same values when using one channel for searching. The red solid line indicates the predicted change in the probability of research shopping The red dotted lines indicate the boundaries of the 95 % confidence intervals. The explanatory variable is varied along the horizontal axis holding the nonfocal variables at at their observed values. Figure 12: The Probabilities of Research Shopping for Multi- and Single-channel Search Behavior, and their difference (for full sample / offline search / online search, each for the relative perceived usefulness, perceived risk and perceived ease of use of the purchase channels). 162 4.3 V R ESEARCH S HOPPING Study 2: Method Study overview and design Study 2 implemented a 2 (offline versus online) x 2 (high risk versus low risk) x 2 (high usefulness versus low usefulness) between-subjects experimental design; in sum eight conditions were developed. The treatments relate to the factors of the survey and manipulate the level of satisfaction as in previous research on satisfaction (e.g., Homburg et al., 2005). All manipulations were tested in advance. To manipulate the offline search channel, video screenings with a tied agent were recorded and shown to the participants in a separate room to guarantee a homogeneous treatment. For the online treatment, four different websites were designed. Table 9 offers a description of each manipulation. Search Channel Attributes Offline Usefulness Dimensions Visual appearance, competence Accuracy of information, ambiguous Risk Online Usefulness Risk information Visual appearance, competence Favorable Unfavorable Quality award mentioned, screened No quality award mentioned, screened person with suite person without suite Relevant, clear-cut information, no Irrelevant, misleading information, reference to conditions and terms, reference to condition and terms, easy language difficult language Quality seal, clearly arranged No quality seal, confusingly arranged information information Accuracy of information, ambiguous Relevant, clear-cut information, no Irrelevant, misleading information, information reference to conditions and terms reference to conditions and terms Table 9: Manipulation of Satisfaction with the Channel. The experiment was designed around a hypothetical car insurance named "Santander". The sample consisted of 309 business students of a Swiss business school. Given the nature of the product, business school students are regarded as an appropriate sample. The students were randomly assigned to an experimental condition. Before the experiment, participants were briefly instructed and provided with a text explaining the task. After the experiment, a questionnaire was handed out requesting participants to evaluate the search phase and their 4.4 Study 2: Analysis 163 expectations toward purchasing in the current and alternative channel. In total, 284 questionnaires were filled out completely. Measurement Satisfaction with the search channel was assessed using a three-item construct, previously used by Voss et al. (2010). As the scale has not yet been applied in the channel context, it was slightly adapted. Consumer satisfaction forms the independent variable and directly influences the perceptions of the search channels’ attributes for purchasing and research shopping. To conceptualize the mediating constructs, the same items as in Study 1 were used; however, a seven-point scale was applied. Research shopping was measured by directly asking whether the participant would also purchase in the search channel. 4.4 Study 2: Analysis Study 2: Test of validities, reliability, and manipulation checks The confirmatory factor analysis was specified equally to Study 1, however, satisfaction was added. All of the commonly used fit values were satisfying. The value for c 2 /d f is 2.243, the comparative fit index [CFI] is .947, the Tucker-Lewis index [TLI] is .927, and the incremental fit index [IFI] is .947. The root mean square error of approximation [RMSEA] slightly exceeded the recommended value of .05, indicating .065. Additionally, all path coefficients between the factor and the respective items were highly significant (a < .001 level). Convergent validity was confirmed for all factors except perceived usefulness of the online channel, showing an average variance extracted of .414, which is rather low. As the results of the following analysis were highly significant, and to keep consistency with Study 1, the factor was not excluded. The same tests for discriminant validity as in Study 1 broadly confirmed the factors’ unidimensionality. In sum, the confirmatory factor analysis deemed the model to fit the data (see Appendix A). Equally to Study 1, the factors’ items were averaged for further analysis. 164 V R ESEARCH S HOPPING The experimental conditions broadly displayed the intended effect as the conditions resulted in different levels of satisfaction with the respective channel. Under both experimental settings (offline and online), the most favorable condition yielded highest means of satisfaction. Consistently, the lowest values for both constructs were displayed for the least favorable condition (see Table 10). Further checks affirmed the treatments’ usefulness. For offline, the difference in mean satisfaction was significant across the groups (Mhighsatis f action = 5.42; Mmedsatis f action = 3.31; Mlowsatis f action = 2.03; F = 44.55; p < .001). For the online manipulation, similar results were obtained (Mhighsatis f action = 4.29; Mmedsatis f action = 3.05; Mlowsatis f action = 2.64; F = 9.56; p < .001). Also the manipulations of each single dimension yielded similarly significant results. It was concluded that the manipulations showed the aimed effect. Factors Outcome Quality Risk Satisfaction Mean (SD) Offline Online 1 + + 2 + − 5.42 (1.50) 3 − + 4 − − 2.03 (1.12) 1 + + 4.29 (1.80) 2 + − 3 − + 4 − − 3.31 (1.82) 3.05 (1.45) 2.64 (1.40) Notes: + = favorable manipulation. − = unfavorable manipulation. Table 10: Means of Satisfaction Depending on the Specific Manipulation. Study 2: Results To test the hypotheses 2a-d, linear (for the relationships between satisfaction and the perceptions), as well as logistic regression (for the probabilistic determination of research shopping) analysis were applied. As suggested by H2a and H2b, 4.4 Study 2: Analysis 165 it was tested for the potential mediation effect of satisfaction with the search phase by the perceived attributes of the channels for buying. Again, the relative evaluation of channel attributes was used. In terms of the dichotomous outcome variable research shopping, the method proposed by MacKinnon and Dwyer (1993) and further discussed by Kenny (2008) was applied. Specifically, each coefficient was multiplied by the predictor’s standard deviation and subsequently divided by the outcome variable’s standard deviation. This process aims at guaranteeing the coefficients’ comparability. Next, direct and indirect effects were bootstrapped. The results from the estimation largely support the established hypotheses. The bias-corrected confidence interval for the indirect effect of satisfaction shows significance on a 95 percent level, with a coefficient of -.548 (LB = -.642; UB = -.414). Similarly, significance is indicated for the direct path between satisfaction and research shopping with a coefficient of -.438 (LB = -.697; UB = -.179). The proportion of the total effect of satisfaction on research shopping that was mediated, calculated based on the method proposed by Alwin and Hauser (1975), is 42.5 percent which is regarded as substantial. Moreover, the effect size for satisfaction with the search channel considerably decreased (from a coefficient of -.631 to a coefficient of -.438) when the channel perceptions for purchasing were included in the model. The McFadden’s pseudo R2 increased from .183 to .307. Not all of the direct effects of the perceptions showed significance, so the calculation with the relative evaluation of perceived attributes was repeated as in Study 1, showing significant values. Conclusively, the results supported the partial mediation hypothesized by H2a and H2b. What is more, the results of Study 1 were underpinned by the significant coefficients of each relative perception of the channels for buying. The overall results are summarized in Table 11. Model (2) Model (3) Model (4) b p SE b p SE b Conclusion Full direct model p SE 95 % LB95 % UB b p SE 95 % LB95 % UB Age –> RS -.031 .062 -.004 .064 -.129 .121 Partial mediation Gender –> RS .213 .3 .236 .343 -.435 .908 H3a, H3b SSAT (total) –> RS -.631 *** .087 -.414 -.438 ** .132 -.697 -.179 -.548***.056 -.642 166 Model (1) Covariates onlyDirect effects on attributes Bootstrapped indirect effects Influence on SSAT –> SSAT SSAT SSAT SSAT SSAT BU prim. BU prim. .399 *** .024 perceptions: –> BRISK prim. -.329 *** .027 Supported for –> BE prim. –> BU altern. –>BRISKaltern. .087 ** .033 offline, partially -.101 ** .032 supported for .139 *** .033 online search -.114 *** .032 –> BEaltern. –> RS BRISK prim. –> H3c, H3d -.146 .242 -.620 .328 RS .352 + .214 -.066 .771 –> RS -.047 BU altern. –> RS .876 *** .207 BRISKaltern. –> BEaltern. –> RS -.102 BE prim. Constant R2 LL –> RS RS 3.21 * 1.5 .169 -.377 .284 Partial support .471 1.28 for Study 1 .206 -.505 .301 .367 * .166 .042 .693 2.02 -1.02 5.06 1.55 .183 .307 -151.9 -128.9 Table 11: Results of Mediation Testing. V R ESEARCH S HOPPING Notes: Unstandardized coefficients shown. + p < 0.10, * p < 0.05, ** p < 0.01, *** p < 0.001. BU = buying perceived usefulness. BRISK = buying perceived risk. BE = buying perceived ease. SSAT = search channel satisfaction. RS = Research shopping (1/0). 4.4 Study 2: Analysis 167 The central hypotheses regarding satisfaction with the search channel (H2c and H2d) proposed that satisfaction with the search channel is positively related to the perceptions of the primary search channel for purchasing, and negatively related to the perceptions of the alternative search channel for purchasing. In the overall model all hypotheses can be confirmed. Satisfaction significantly influences perceived usefulness (b = .399; p < .001), perceived risk (b = -.329; p < .001), and perceived ease of use (b = .087; p = .008) of the primary search channel for purchasing. Similarly, satisfaction with the search channel unfavorably influences the perceptions of the alternative search channel for purchasing. The regression estimates were highly significant and meaningful; satisfaction with the search channel unfavorably influences perceived usefulness (b = -.101; p = .002), perceived risk (b = .139; p < .001), and perceived ease of use (b = -.114; p < .001) of the alternative search channel. Finally, it was checked for differences between searching offline and online as Study 1 indicated that they exist. The results for searching offline clearly pointed out that satisfaction leads to systematically worse perceptions of the alternative channel’s attributes (perceived usefulness: b = -.072; p = .008, perceived risk: b = .178; p < .001, perceived ease of use: b = -.130; p = .003), while perceiving the primary channel’s attributes more favorable (perceived usefulness: b = .430; p < .001, perceived risk: b = -.347; p < .001, perceived ease of use: b = .072; p = .087). Contrary to this, the hypotheses for searching online were not fully confirmed. Satisfaction with the online search favorably influences perceived usefulness (b = .340; p < .001), perceived risk (b = -.266; p < .001), and perceived ease of use (b = .136; p = .012) of the primary search channel for purchasing. However, only one of the hypothesized negative links between satisfaction with the search channel and the perceptions of the alternative channel was found, namely for the influence of satisfaction on the perceived ease of use of the alternative channel (b = -.117; p = .027). All other hypotheses were rejected (perceived usefulness: b = -.011; p = .810; perceived risk: b = -.004; p = .925). To sum up, the influence of satisfaction is particularly 168 V R ESEARCH S HOPPING salient when searching offline. However, the proposed effect remains rather silent when searching online. 5 Discussion The studies investigated the business- and research-relevant phenomenon of research shopping. Contrary to other approaches (e.g., Verhoef et al., 2007), the focus was rather on the question "Why would consumers stick with a channel"? For doing so, the status quo bias theory was suggested to serve as underlying theoretical perspective (Kahneman et al., 1991; Samuelson and Zeckhauser, 1988). Whereas previous studies forego taking into account multiple search channels, the current study investigates consumer channel behavior more realistically since most consumers nowadays do not rely on a single search channel (Pauwels et al., 2011; Yahoo! Inc. and OMD, 2006). Thus, to assess the status quo bias theory’s value for explaining research shopping, two mechanisms were investigated. First, biased behavior towards research shopping was investigated, thereby determining the boundaries of economics theory (Brown and Dant, 2008). Specifically, it was suggested and empirically validated that using a single channel for searching would trigger a status quo bias decreasing the probability of research shopping. First, this was indicated by the increased probability of research shopping when complementing information search through a second channel, although from an economics theory perspective this should not be decisive (Kahneman et al., 1991). Additionally, the functional form of the difference in probabilities of research shopping was elaborated. Findings revealed that the hypothesized inverted U-shape is particularly salient when searching online, however, is largely negligible when searching offline. Arguing with the threshold introduced by Gal (2006), this might as well indicate that the status quo bias is substantially more accentuated for searching offline. From this point of view, even more incentives must be provided for offline searchers to provoke research shopping. This is also 5 Discussion 169 in line with Verhoef et al.’s (2007) findings that online consumers are more prone to research shopping. In sum, although the hypotheses were not fully supported, it is suggested that consumers who search online were less susceptible to a status quo bias. In sum, the nonlinear relationships concerning the difference in probabilities between using single versus multiple channels for searching strongly advocate the applicability of the status quo bias theory to research shopping, whereas the bias is particularly pronounced when searching offline (Falk et al., 2007). Moreover, the findings confirm previous literature, which proposed that multichannel consumers differ from other consumers in their decision-making (e.g., Neslin et al., 2006; Rangaswamy and Van Bruggen, 2005; Konus et al., 2008). Second, it was focused on biased perceptions regarding the purchase channels as indirect source of the status quo bias (e.g., Yen and Chuang, 2008). In line with Falk et al. (2007), satisfaction with the search phase was identified to provoke biased perceptions of the purchase phase, which in turn, determine research shopping. The findings of Study 1 were supported, as the results showed robust and significant effects for switching from an offline to an online channel, while the effect was not present vice versa. Literature suggesting channel choice as depending on the respective phase of the buying process (e.g., Pookulangara and Natesan, 2010) aids in interpreting these findings. Specifically, as consumers tend to get a first impression by using an online channel they might switch channels, regardless of whether they are satisfied or not. This type of research shopping referred to as "web-to-store" shopping (Pauwels et al., 2011) is by far more common, as confirmed by the descriptive statistics of both studies. Additionally, consumers possess different motivations in their channel choice (Kukar-Kinney et al., 2009). As such, using an offline channel is considered as larger commitment to purchasing or as the last link before purchasing. Hence, when favorably perceiving searching offline, consumers largely disregard alternative channels and buy right away. In sum, the described facets of the status quo bias theory predominantly unfold their influence when searching offline; however, both mechanisms need to 170 V R ESEARCH S HOPPING be considered to provide a complete picture of how the status quo bias theory is applicable to research shopping. Finally, a goal of the current investigation was to contribute to literature on the rarely used status quo bias theory (Samuelson and Zeckhauser, 1988). Although it has received popularity in other disciplines (e.g., Johnson et al., 1993; Rubaltelli et al., 2005), to date, this theory has rarely been applied in marketing settings. The findings suggest that a status quo bias is largely applicable to research shopping, and thus, a further instance that underlines the theory’s robustness is shown. Moreover, while most research that contributes to the status quo bias theory has applied experimental approaches, the current study contributes to the literature via a large-scale study. 6 Managerial implications Assuming that the biases found in this study cannot be directly used to advise companies in refining their multichannel strategies would be misleading. Research has provided substantial evidence that multichannel consumers are more profitable than consumers who use a single channel (e.g., Kumar and Venkatesan, 2005; Venkatesan et al., 2007). To persuade single channel consumers to become (more profitable) multichannel consumers, the status quo bias must be overcome. The necessity of a well-integrated and orchestrated system of channels is suggested (Chatterjee, 2010; Neslin et al., 2006; Reynolds et al., 2006). For instance, practitioners could provide online terminals in their brick-and-mortar stores to reduce uncertainty toward the commonly more cost-efficient online channels (Campbell and Frei, 2010; Hitt and Frei, 2002). Accordingly, direct links to offline channels on company websites may reduce existing uncertainties when buying offline. Both options enhance the utility that is derived from buying within the same company’s channels by diminishing a potential bias (Gal, 2006) to switch the channel. In line with recent research (Ansari et al., 2008; Thomas 6 Managerial implications 171 and Sullivan, 2005), it is recommended that communication efforts of companies need to be aligned to further guide consumers through the company’s maze of channels. For instance, by effectively communicating the advantages of using an online channel to make purchases, the consumer’s expected utility using a specific channel increases, while uncertainty toward the channel decreases. This would magnify a company’s efforts to bring consumers to employ a specific channel. Nevertheless, a pivotal factor to this strategy is creating a firm-lock-in (Verhoef et al., 2007), or making research shoppers so-called "loyal research shoppers" (Neslin and Shankar, 2009). If no burden to keeping consumers from switching companies can be established, practitioners may be well-advised to use the status quo bias to deter consumers from research shopping (Neslin and Shankar, 2009) because the probability of switching companies decreases simultaneously (e.g., Chiu et al., 2011; Nunes and Cespedes, 2003). A major finding of Study 1 is that consumers become research shoppers when they search via multiple channels. Hence, to avoid research shopping, the relevant question is how companies can prevent consumers from using multiple channels for searching (as one-stop shoppers; Neslin and Shankar, 2009). Since the effect is especially accentuated when searching online, companies should provide comprehensive, clear-cut information on their website to make using a second search channel obsolete. This, in turn, would raise the hurdle that is imposed by the status quo bias and reduce the probability of research shopping. Adding to this, Study 2 identifies satisfaction with the search phase as a key variable in embracing the advantages of a status quo bias. This is considerably more pronounced when searching offline. Thus, companies should define search satisfaction as focal channel performance variable. In the conducted experiment, satisfaction via the accuracy of information and appearance of customer contact personnel was manipulated; many more relevant dimensions, such as a website’s graphic style, exist (e.g., Montoya-Weiss et al., 2003) when striving to increase the bias. 172 V R ESEARCH S HOPPING Finally, in line with Valenzuela et al. (2008), it was suggested that the presence of a status quo bias may also result in higher levels of satisfaction with the buying process. Consumers might not feel being forced to make a trade-off between what channel to employ because they are biased toward the search channel; therefore, not being status quo-biased may be negatively related to the satisfaction of the overall buying process. Thus, when striving to make consumers search and purchase with the same channel, practitioners can directly use this bias to enhance overall consumer satisfaction with the buying process. 7 Limitations and future research As with all studies, the current investigation has limitations that can guide future research. First, this article focuses on online and offline channels to provide initial evidence on a potential status quo bias. Previous literature has investigated a broader variety of channels (i.e. catalogs, Verhoef et al., 2007) using other approaches and theoretical underpinnings. While the plurality of channels has much increased, few resonances can be found in research. Thus, considering the status quo bias for other types of channels constitutes an opportunity for further research. Next, it was controlled for experience by determining consumers’ last purchases of financial services as a means to generate valid findings. However, one might also consider search and purchase experiences of other products and services as relevant (e.g., Neslin et al., 2006) to overcome the status quo bias. To further isolate and extend the findings of the current study in direction of the suggested research questions, one can conduct longitudinal research that spans several industries. Related to experience is the phenomenon of channel migration, referring to using one channel for making the purchase and over time migrating to another for future purchases (Ansari et al., 2008). Similarly as for research shopping, it 7 Limitations and future research 173 is suggested that the status quo bias theory holds important implications for this phenomenon. In line, we expect interesting findings from using the status quo bias theory for further channel-related phenomena. It is acknowledged that also other theories might come to similar hypotheses as the status quo bias theory. For instance, omission bias and inertia have been described as being closely related to status quo bias (e.g., Anderson, 2003; Chernev, 2004; Ritov and Baron, 1992). According to both, there is a preference for the option that does not require action (Spranca et al., 1991); however, viewing the search and purchase phase as partially separate (i.e., consumers do not necessarily buy a product or service when having searched, in particular in the financial services sector where spontaneous purchases are rare) also implies that keeping the status quo requires taking some action. Certainly, this constitutes a basic assumption of the presented article, however, to date studies motivate this assumption’s validity since the purchasing process becomes increasingly fragmented (Schaefer, 2011). Hence, both mechanisms only play a minor role in research shopping while the main effect is accredited to the status quo bias. Additionally, Study 2 focuses on evaluations of channels as trigger of foregoing research shopping, and not on self-perceptions as inertia would propose (Falk et al., 2007). Thus, it is suggested that inertia, as well as the omission bias play a minor role for explaining the effects found in both studies. However, both omission bias and inertia present excellent opportunities for further investigating research shopping. In line, deciphering the effects of the status quo bias theory is an example for applying alternative theories to a phenomenon that has primarily been considered from similar theoretical perspectives, such as the theory of reasoned action or planned behavior (e.g., Pookulangara and Natesan, 2010; Verhoef et al., 2007). This allows for generating novel theoretical insights since both aforementioned theories are in line with economics theory. It is worthwhile to note that not all hypotheses were confirmed, thus, further theories may be helpful to explore consumer channel behavior and provide additional insights into research shopping. For instance, combining switching cost theoretical considerations (e.g., Burnham 174 V R ESEARCH S HOPPING et al., 2003; Shankar et al., 2011) with the status quo bias theory may provide information on the boundaries of the selected theoretical perspective. Certainly, also theories from other disciplines, such as consumer psychology, have the potential to further complement the current findings. A highly attractive avenue for future research is to examine the status quo bias in the combination of research shopping and switching companies, which is dubbed cross channel shopping (e.g., Brynjolfsson et al., 2009; Chiu et al., 2011). This is certainly attractive as profound knowledge regarding the correlation between using different channels and companies when searching and purchasing a product or service is still missing (e.g., Chiu et al., 2011; Nunes and Cespedes, 2003). Finally, compared to studies that use overall evaluations of risk and usefulness for determining channel choice (e.g., Montoya-Weiss et al., 2003; Verhoef et al., 2007), consumers were directly asked for their perceptions of channel attributes. Certainly, one limitation of this procedure is its difficulty in terms of the confirmatory factor analysis. Although the factors employed were largely supported by both analyses, items needed to be dropped because of multi-dimensionality. Moreover, one factor out of twelve did not reach an average variance extracted of .5, which did not alter the basic mechanism since the effects in the follow-up analyses were deemed substantial. In conclusion, this article emphasizes, notwithstanding the limitations, the usefulness of the status quo bias in explaining research shopping. Doing so, the theoretical lens applied in this article contributes to current knowledge in the area of multichannel consumer research. A Confirmatory factor analysis 175 Appendices A Confirmatory factor analysis Measurement scales and respective indicators SL AVE Cr’s a CR surveyexp.surveyexp.surveyexp.survey exp Buying perceived usefulness Offline .617 .672 .858 .882 .865 Provides good selection of products (a), (d) .81 .77 Way of buying fits my needs (a), (e) .83 .86 Makes me feel unique (e) .66 .75 Gives good advice (a), (b) .83 .89 Provides good value for money (a) (y) Buying perceived risk .706 .757 .829 .861 .827 .862 Presents risk to get wrong product (a), (b) .84 .85 Presents risk to get low quality (a) .84 .89 Buying perceived ease .633 .724 .769 .833 .775 .840 Is a lot of effort (a), (d) .82 .89 Is time-consuming (a), (d) .77 .81 Buying perceived usefulness Online .554 .414 .819 .676 .829 .738 Provides good selection of products (a), (d) .76 .65 Way of buying fits my needs (a), (e) .83 .69 Makes me feel unique (e) .54 .60 Gives good advice (a), (b) .81 .63 Provides good value for money (a) (y) Buying perceived risk .714 .564 .835 .718 .721 .833 Presents risk to get wrong product (a), (b) .85 .79 Presents risk to get low quality (a) .84 .71 Buying perceived ease .633 .733 .769 .837 .775 .846 Is a lot of effort (a), (d) .82 .90 Is time-consuming (a), (d) .77 .81 Satisfaction (c) (x) Satisfaction - Pleased with overall service - .84 Shopping is a delightful experience - .93 I am completely satisfied - .91 .800 - .920 - .923 Notes: SL = Standardized loading; AVE = Average variance extracted; Cr’s a = Cronbach’s alpha; CR = Composite reliability. 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Curriculum Vitæ Personal Information Name: Date of Birth: Place of Birth: Nationality: Tobias Franz Schlager 13th of August 1983 Freilassing, Germany German Education 02/2010 - present 07/2011 - 08/2011 07/2008 - 08/2008 10/2003 - 01/2009 09/2006 - 05/2007 09/1993 - 07/2002 University of St. Gallen (HSG), St. Gallen, Switzerland Doctoral Studies in Management (Specialization: Strategy) University of Michigan, Ann Arbor, United States Summer Program in Quantitative Research Methods Harvard University, Cambridge, United States Summer Program (Major: International Marketing) University of Innsbruck, Austria Magister in International Business Administration (Major: Marketing, Strategy) Wilfrid Laurier University, Waterloo, Canada Study Abroad Program (Major: Marketing, Strategy) Rottmayr Gymnasium, Laufen, Germany Abitur (A-Levels) Work Experience 02/2010 - present 01/2011 - present 05/2009 - 01/2010 10/2008 - 05/2009 10/2007 - 06/2008 05/2007 - 10/2007 Institute of Insurance Economics University of St. Gallen, Switzerland Project Manager and Research Associate Universal Information Broking (UIBk), Innsbruck, Austria Founder and Member of the Supervisory Board LICETUS GmbH & Co. KG, Munich, Germany Business Consultant Institute for Strategic Management, Tourism and Marketing University of Innsbruck, Austria Teaching Assistant Austria PUMA Dassler GmbH, Salzburg, Austria Marketing Manager Trainee PUMA AG, Herzogenaurach, Germany Internship International Product Marketing