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Drivers of Demand for Specialty Crops: The Example of Arizona-Grown Medjool Dates Carola Grebitus Assistant Professor Morrison School of Agribusiness W.P. Carey School of Business Arizona State University 7231 E. Sonoran Arroyo Mall Mesa, AZ 85212 [email protected] (Corresponding Author) Anne O. Peschel Assistant Professor MAPP - Department of Management Aarhus University [email protected] Renée Shaw Hughner Associate Professor Morrison School of Agribusiness W.P. Carey School of Business Arizona State University [email protected] Selected Paper prepared for presentation at the Agricultural & Applied Economics Association’s 2016 AAEA Annual Meeting, Boston, MA, July 30-August 2, 2016. Copyright 2016 by Carola Grebitus, Anne O. Peschel, Renée Shaw Hughner. All rights reserved. Readers may make verbatim copies of this document for non-commercial purposes by any means, provided that this copyright notice appears on all such copies. Drivers of Demand for Specialty Crops: The Example of Arizona-Grown Medjool Dates Abstract. Recently, gross production of Medjool dates has approximately doubled in Arizona, with the growing region increasing to over 3,000 harvested acres in 2014. As the supply of Medjool dates increases, consumer demand needs to increase accordingly. This research aims to investigate consumer preferences for specialty crops such as Medjool dates. This paper analyzes the impact of Arizona Grown and California Grown labeling on consumer preferences for Medjool dates applying choice experiments. Furthermore, the influence of pesticide-free labeling and GMO-free labeling on willingness to pay is tested both individually and as interaction effect. Results show that consumers prefer dates grown in California and Arizona over dates not labeled for region of origin. Between California and Arizona, those dates originating in California are preferred. Also, pesticide free and GM-free dates are preferred with pesticide free having a larger impact on choices. Overall, results can be used by stakeholders to create target oriented marketing activities. Key Words. Choice experiments, Medjool dates, Preferences, Arizona grown, Pesticide free, GMO free JEL Code. M31, Q13 1 1. Introduction Creating demand for fruits and vegetables has become important in recent years. From Michelle Obama’s “Let’s Move” campaign to the Produce for Better Health Foundation’s “More Matters”, Americans are being encouraged to eat more fruits and vegetables. State agricultural departments have hoped to capitalize on the increased focus of produce consumption, as well as consumer preferences for locally grown produce (Patterson, Olofsson, Richards and Sass 1999). Towards this endeavor, federal specialty crop block grants have provided funding to help states enhance the competitiveness of their specialty crops. This research stems from one such grant. As growers are currently navigating the maze of packaging and labeling options available to them, questions remain as to the value consumers attribute to various labeling designations. The fresh date industry is an industry in which an understanding of consumer preferences and consumers’ willingness to pay for various product attributes is needed. This research uses the Medjool date industry as a context to examine date attributes, such as growing region, “GMO-free” and “organic”, and their effect on consumers’ willingness to pay. The date industry provides a compelling field of study; the industry has experienced considerable growth, with worldwide sales of dates increasing 14% over the last decade. In the United States, sales of dates increased 7.2% from 2014-2015, in a category where overall fruit consumption declined or remained stagnant (Mintel Reports 2015). In the United States, the vast majority of date production occurs in Coachella Valley, California, with more than 90 percent of U.S. dates grown here. In recent decades, though, date production has expanded to the Southwestern Arizona desert, along the California-Arizona border, with the wide planting of Medjool date palm trees. In a depressed economic region, the Medjool date industry has contributed significantly to the region’s economy. It is estimated that 7,500 acres of Medjool dates are planted in Southwestern Arizona, producing 14 million pounds of dates, totaling $8 2 million in market value (Riggs 2015). Additionally, a packing coop located in the area, packs about 20 million pounds of Medjool dates annually. Medjool date farming adds an estimated $30 million to the Arizona economy. While the Medjool date industry is vitally important to this region, experts have noted that “the biggest challenge in the Medjool date industry is increasing interest in consumers eating dates” (Riggs 2015). Thus, this research examines the drivers of Medjool date demand by looking at consumers’ preferences for various date attributes (e.g., growing region, pesticide usage, and presence of genetic modification). The remainder of the paper is organized as follows: section 2 presents a discussion of the literature on consumers’ willingness to pay for various produce attributes (region of origin, pesticide free production and GMO free production); section 3 provides the methodological background; section 4 presents the empirical results; and section 5 concludes with a discussion of implications. 2. Literature review Several studies have suggested that consumers are willing to pay price premiums for produce with specific production practices, such as organic produce (Batte et al. 2007; Goldman and Clancy 1991; Jolly et al. 1991; Yiridoe, Bonti-Ankomah and Martin 2005). Though, the association of consumer demographics, such as education, income and age, have yielded mixed results. For example, research has found that respondents with higher income levels are more willing to pay higher premiums for organic and GMO-free products (Loureiro and Hine 2002; Bernard and Bernard 2010); however, other studies have found the converse to be true (Jolly and Dhesi 1989; Jolly 1991). Lifestyle and attitudinal factors seem to be better suited in explaining willingness to pay (WTP). For example, Huang et al. (1999) found that more health-conscious consumers were willing to pay more for organic and GMO-free food. Loureiro and Hine (2002) found that 3 importance of freshness and nutrition had a positive effect on the premiums that consumers are willing to pay, stating that GMO-free products would be beneficial to target the segment of consumers who are more food safety-conscious. Moon and Balasubramanian (2003) found that US consumers who perceived health and/or environmental risks related to biotechnology in food production, were willing to pay a premium to avoid cereals made with biotech ingredients. However, consumers who attributed benefits to biotechnological food (i.e., reduction in pesticide usage, greater supply of food, improved nutrition), were less likely to pay a premium. In 2005, Lusk, Mutsafa, Kurlander and Taulman conducted a meta-analysis of 25 studies and developed a model which estimated consumer demand for GMO-free food. They found that consumers across the world appeared to be somewhat averse to genetically modified (GM) foods and value non-GM foods over GM foods. However, GM products that provided tangible benefits, such as increased nutrition to consumers, significantly decreased premiums for non-GM food. They called for more research in the area of GM food. As Bonti-Ankomah and Yiridoe (2006) note, WTP premiums differ widely among countries, consumer segments, product types, and consumer behavior. Adams and Salois (2010) also provided a review of consumer preferences and willingness to pay for local and organic food, and noted the shift towards “local” in light of “corporatization” of the organic food sector. In fact, recent years have seen a dramatic increase in marketing and consumption of locally grown produce (Agricultural Marketing Service 2009). Consumer preference for locally grown foods is well-documented (Patterson et al., 1999; Jekanowski, Williams and Schiek, 2000; Onken and Bernard 2010), and when compared to organic food, several relatively recent studies have noted consumers place a greater value on local produce over organic produce (e.g., Thilmany, Bond, and Bond 2008; Hu, Woods, and Bastin 2009; Loureiro and Hine 2002). The U.S. 4 Department of Agriculture (USDA) suggested that consumers are choosing local food products because of perceptions of its freshness and health benefits, familiarity with its sources, environmental sustainability, and as a way of supporting small farms and local economies (Martinez et al. 2010). Several studies have indicated that consumers not only prefer local products, but are willing to pay substantial premiums for locally grown produce; though, the premiums consumers are willing to pay, vary by state and by product (Giraud, Bond, and Bond 2005). For example, preferences for Arizona grown products by residents, as well as by the state’s tourists were found (Patterson et al. 2003; Patterson et al. 1999). Jekanowski, Williams, and Schiek (2000) found that perceptions of quality played an important role in consumer preference for local products. In a study on the New England states, consumers in Vermont, New Hampshire, and Maine were willing to pay a small premium for local specialty food products (e.g., maple syrup, salsa, cookies; Giraud, Bond, & Bond 2005). Using choice experiments, James, Rickard and Rossman (2009) found that across segments of consumers, applesauce designated “locally grown” had the highest WTP estimates. Carpio and Isengildina-Massa (2009) found that South Carolina consumers were willing to pay an average premium of 27% for local produce, and that WTP for local produce was positively influenced by increases in consumer age and income, as well as by “perceived product quality, a desire to support the local economy, patronage of farmers markets, and consumer ties to agriculture”. Finally, Onken, Bernard, and Pesek (2011) conducted a choice experiment of Mid-Atlantic consumers and found that consumers in Maryland, Pennsylvania and Virginia had a much greater WTP for locally grown strawberry preserves; while, respondents in New Jersey were more likely to prefer state promoted produce. While more research into locally grown and state-branded foods exist; to our knowledge, no research has yet considered Medjool dates or the proximity of California to Arizona as a substitute for locally grown. 5 This research is unique from the above literature in the type of food product (Medjool dates), the growing origin, as well as the production processes (i.e., pesticide-free and Non-GMO). While organic produce in the U.S. does not contain genetically modified food, and is commonly thought to be pesticide-free, the labels of interest in the current study are specifically “GMO -free” and “pesticide-free”. For the most part, Medjool dates grown in Arizona are not treated with pesticides, as the dry, hot climate does not allow pests to survive; however, many of the growers have not gone through the cumbersome process of getting USDA Organic certified. Thus, pesticide-free designation is a particularly meaningful one. Secondly, because it is not economically feasible to sell dates strictly within the confines of the state, they cannot be labelled as locally grown. The question then becomes whether including the state of origin is of value to consumers and whether it acts as a proxy for locally grown. California is the largest growing region of dates in the United States; however, the Medjool dates of interest are grown in Arizona. The two states have vastly different public images, from the landscape and terrain to political ideology. Whether these state differences may impact the value attributed to dates, is not known. Taken as a whole, even though a plethora of research surrounding state branding programs, locally grown and organic research exists, there is still much to learn about consumers’ willingness to pay for various food attributes. 3. Methodological background 3.1 Choice experiments The main objective of this research project is to measure the premiums consumers are willing to pay for Medjool dates labeled for region of origin, pesticide-free production and GMO-free 6 production. In addition, we test whether those consumers that prefer pesticide-free dates are more likely to prefer GMO-free dates, and vice versa. Choice experiments are a commonly used tool set used to isolate individual product characteristics, such as region of origin labeling, and their specific influence on price. This provides an insight into consumers’ preferences and related willingness to pay. In choice experiments, participants make repeated choices between different bundles that are characterized by different attributes and the respective levels of these attributes. The individual’s utility depends on attribute levels of the choices made from the choice sets. This procedure enables the researcher to determine the attributes which influence the choice significantly and the marginal WTP for an increase/ decrease in the significant attributes (Goldberg and Roosen, 2007). Following Alfnes et al. (2006) we run a hypothetical online choice experiment to collect data that provide stated preferences of consumers for 8 oz of Medjool dates. Medjool dates are premium dates. In general, dates are fresh fruit that are characterized by high shares of potassium and fiber. The experimental design is as follows. Shelf simulation of 8 oz of Medjool date packages is prepared by taking premium photographs of dates and generating pictures of the alternatives that include the respective attributes. Each participant makes 12 choices. The experimental design is a hybrid design. It consists of 6 choice sets which were generated using a fractional factorial design. Each participant received 3 out of these 6 choice sets. In addition, an efficient design was created consisting of 36 choice sets. The efficient design was a block design consisting of 4 blocks, which means that each participant received 9 choice sets to choose from the efficient design. Both designs were created using Ngene. To create the efficient design we conducted a pre-test using an optimal orthogonal in the differences (OOD) design. The pre-test data was used to estimate mixed logit models to generate priors for the efficient design. 7 The experiment is conducted with 750 participants. Participants are recruited via Qualtrics. The online survey is programmed in Qualtrics. Participants made repeated choices between scenarios of four different Medjool date packages. The experimental design included price with six levels, region of origin with three levels and pesticide-free and GMO-free labeling with two levels each. The attributes differed from scenario to scenario according to either a fractional factorial design or efficient design. The four alternatives of dates were referred to as option A, option B, option C and option D. In addition, the participants were able to choose “none-of-these” alternatives. The dates were characterized by different combinations of the attributes (see Table 1). For example a date package might be GMO-free, Pesticide-free, California grown and cost $3.49 per 8 oz (see Figure 1, option B). Table 1: Attributes of the dates Attribute Price / 8oz Region of origin Pesticide free GMO free Level $2.49 California grown Label Label $3.49 Arizona grown No label No label $4.49 No label $5.49 $6.49 $7.49 8 Figure 1 presents an example of a choice set. Figure 1. Choice set example Option A B C D $2.49 $3.49 $3.49 $6.49 Arizona grown California grown Arizona grown Pesticide free Pesticide free Pesticide free GMO free GMO free None 8 oz of of Medjool Pesticide free these dates I choose: 3.2 Mixed logit model To analyze the data a multinomial mixed logit model with individual specific, random and independent parameters to capture taste variations is used. Compared to the multinomial logit model the mixed logit model has the relevant advantage of allowing for taste heterogeneity unconditional on socio-economic covariates (Menapace et al., 2008). Moreover, the mixed logit obviates three limitations of the standard logit model by allowing for random taste variation, unrestricted substitution patterns, and correlation in unobserved factors over time (Train, 2003). This is particularly relevant because several studies have shown that taste variation is only partially linked to and poorly explained by socio-economic variables such as age and education (e.g. Baker and Burnham, 2001). The mixed logit can be defined as any model whose choice probabilities are integrals of standard logit probabilities over the density of parameters to be estimated. It can be specified via random parameters in the utility function and the goal is to estimate the moments of the distributions of individual-specific taste parameters. 9 The following example explains this point. One of the explanatory variables used in the model is the region of origin ‘California grown’. It is reasonable to assume that consumers differ in their level of appreciation for a specific region of origin of dates. Some consumers may prefer California grown while others may prefer Arizona grown. In this model, the random behavior of taste for the variable ‘California grown; is described by a normal distribution with a certain mean and variance. The mixed logit task is to estimate mean and variance, which completely describe the normal distribution. An important implication of the mixed logit is that probability statements can be attached to the values of these parameters. The mixed logit produces efficient parameter estimation when the same individual makes repeated choices since it considers the correlation over sequential choices induced by the variability in the individual-specific parameters. Model specification and estimation Each decision maker i (i 1,...,20) faces T=12 choice situations (t 1,..., T ). In each choice situation, the decision maker is presented with a set of alternatives. Each set contains 5 elements: 4 date alternatives and the ‘no purchase’ alternative. In total, there are J=49 alternatives in each block, indexed by j, j {1,..., J }, including 48 date packages and the ‘no purchase’ ( j37 ). J t represents the set of alternatives at time t , for t 1,..., T , J t { j2t 1 , j2t , j37 }. The choice probabilities of a mixed logit for panel data and with linear random utility function can be specified as shown in the following. The utility of individual i from alternative j, in choice scenario t , is denoted by U ijt i xijt ijt , (1) 10 where ijt is distributed iid extreme values over individuals, alternatives and time, and xijt is a vector of observed variables relating to alternative j , which is described in detail below. is a vector of unobserved coefficients that vary over individuals but not over alternatives (representing the individuals’ tastes). It varies over individuals with density g ( ) , where represents the parameters of this distribution. For example, if is normally distributed in the population represents the mean and covariance (Revelt and Train, 1999). Within a choice set, an individual chooses the option that maximizes utility within the given set. Let y it denote the individual’s chosen alternative in situation t , and let yi yi1 ,..., yiT denote the person i’s sequence of chosen alternatives. Since the ijt ' s are distributed extreme value, the probability conditional on i that the individual chooses alternative j in situation t is standard logit (Revelt and Train, 1999): Li ( j , t ) e i X jt e i X jt (2) j and since the ijt ' s are independent over choice situations, the probability of the individual’s sequence of choices, conditional on i , is the product of logits. We do not observe i , and so these conditional probabilities are integrated over all possible values of i , using the population density of i . The integral in the mixed logit probability generally does not have a closed form, and so it is approximated numerically through simulation. The parameter estimation is obtained by maximizing the simulated log-likelihood function. The estimated coefficients in the (linear) utility function vary over people but are constant over choice situations for each individual. Properties of the maximum simulated likelihood estimator are given by Hajivassiliou and Ruud (1994). 11 The parameter distributions are assumed to be independent normal distributions. Across individuals the price coefficient is fixed. The advantage of having a fixed coefficient for price is that the WTP for each non-price attribute has the same distribution as the attribute’s coefficient. As suggested by Train (2003) the mixed logit estimates presented in this paper are obtained via simulated maximum likelihood using 250 Halton draws. In the models seven explanatory variables are included. Table 2 gives a summary of the included variables. Table 2: Summary of variables used in the analysis Variable Variable Definition Price Continuous variable indicating price of $2.49, $3.49, $4.49, $5.49, $6.49, $7.49 California grown Dummy variable equal to 1 if date alternative was labeled “California grown” Arizona grown Pesticide-free Dummy variable equal to 1 if date alternative was labeled “Arizona grown.” No-label option was excluded because of multicollinearity. Dummy variable equal to 1 if date alternative is carrying label “pesticidefree” GMO-free Dummy variable equal to 1 if date alternative is carrying label “GMO-free” Pest-GMO Interaction effect between Pesticide-free and GMO-free NOT Dummy variable equal to 1 if the none-of-these option was chosen for a choice set. To estimate the model we use the mixed logit code in NLogit/Limdep. The code is designed for panel data and accounts explicitly for the correlation over time in unobserved utility that arises when there are repeated choices by a given individual. We use the panel version of the mixed logit code because each participant gives rise to a panel of 12 choices. In the model six random coefficients and one fixed coefficient (price) are used. 12 4. Results At the time of paper submission we were still collecting data. Therefore, we present the results from the pre-test. The pre-test was conducted with N=20 individuals. Each individual completed 36 choices, generated with the OOD design, resulting in a total of 720 observations. The results of the mixed logit estimates of our model are presented in Table 3. The estimated models show the following results and effects on consumers’ preferences for dates: Table 3: Parameter estimates Coeff. SE z-value p-value California grown (M) 1.388 *** 0.438 3.170 0.002 Arizona grown (M) 0.747 ** 0.373 2.000 0.045 Pesticide-free (M) 2.363 *** 0.512 4.620 0.000 GMO-free (M) 0.855 ** 0.430 1.990 0.047 Pest-GMO (M) 2.448 *** 0.679 3.610 0.000 NOT (M) -13.875 *** 1.475 -9.410 0.000 Price (M) -2.740 *** 0.205 -13.380 0.000 California grown (SD) 4.233 *** 0.543 7.790 0.000 Arizona grown (SD) 0.578 * 0.307 1.890 0.059 Pesticide-free (SD) 2.089 *** 0.613 3.410 0.001 GMO-free (SD) 2.636 *** 0.458 5.760 0.000 Pest-GMO (SD) 2.578 *** 0.496 5.190 0.000 NOT (SD) 4.515 *** 1.552 2.910 0.004 Note: *** p<0.01; ** p<0.05; * p<0.1 Results show that the price coefficient is significant and negative, as expected. That means the higher the price the less preferred the presented option of Medjool dates. California grown and Arizona grown dates are both preferred over non-labeled options, with California grown dates being more likely to be chosen than Arizona grown dates. 13 Furthermore, participants preferred dates that were labeled as Pesticide-free and GMOfree. Also, the interaction effect between these two labeling options is significant and positive, indicating that those individuals that are more likely to choose Pesticide-free labeled dates are more likely to choose GMO-free dates. The NOT variable is significant and negative suggesting that participants rather chose “something” over “nothing.” The standard deviation parameters are significant for all variables. This finding leads to the conclusion that there is heterogeneity in the preferences of consumers when it comes to region of origin and production methods of dates. This means that, indeed some consumers may prefer, for example, California grown dates, but this does not have to hold for all consumers. Looking at willingness to pay in Figure 2, results show that consumers are willing to pay $0.51 more for 8 oz of dates from California, while they are willing to pay $0.27 more for 8oz of dates from Arizona. Dates labeled as pesticide-free increase $0.86 in value per 8oz, while dates labeled as GMO-free increase $0.31 in value per 8oz. However, results have to be treated with caution, since these are preliminary results based on a pre-test. WTP in $/8oz 1.00 0.86 0.80 0.60 0.51 0.40 0.27 0.31 0.20 0.00 California grown Arizona grown Pesticide-free GMO-free Figure 2. Willingness to pay 14 5. Conclusion Our research project aims to investigate consumer preferences for specialty crops such as Medjool dates. Determining consumer preferences and related willingness to pay, enables stakeholders to better understand consumers and to create target-oriented marketing strategies to more effectively communicate benefits of Medjool dates. Considering the high unemployment rate in date growing regions, such as, Yuma, AZ, it is of high socio-economic relevance to strengthen producers’ ability to market their product more efficiently, in order to increase demand for Arizona grown Medjool dates and secure employment for the local population. By employing choice experiments with relevant consumer attributes, such as price, region of origin and pesticide-free as well as GMO-free labelling, we could estimate consumer preferences and WTP for these attributes. Using multinomial mixed logit choice modelling, we account for consumer heterogeneity in our analysis. Our pre-test results show that on average, consumers are willing to pay a larger premium for California grown Medjool dates than Arizona grown Medjool dates. Considering that Arizona is the largest producer of Medjool dates, it is surprising that even the local population prefers dates from another state. This strengthens our argument to provide local producers with better strategies to successfully market their products. Providing consumers with information about the benefits of buying Arizona grown Medjool dates would be the first step in this regard. Moreover, consumers were willing to pay almost a $1 premium for pesticide-free production labelling of Medjool dates. Considering that this label is not in use currently, it will be a viable tool to communicate the production method in the market place. In addition, consumers who preferred the pesticide-free production method were more likely to choose products that also 15 carried the GMO-free label, indicating that providing products with both labels, would not cannibalize but rather augment the effect of the other. 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