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Stevens Institute of Technology Howe School of Technology Management Syllabus MGT 644/MIS 661 Online Marketing Semester: 2014 Spring Instructor Name & Contact Information: Jie Ren Office phone: 201-665-9633 Email: [email protected] Day of Week/Time: Wednesday, 6:15pm to 8:45pm Office Hours: By Appointment Class Website: Moodle Course Description This course provides a basic understanding of social network theories and the way they are applied in online marketing. Students will develop this understanding from three aspects: (1) social network theories and marketing theories, (2) the techniques and best practices of online marketing, and (3) social network analysis. The specific topics include the representation of networks and basic concepts of network theories, such as strength of weak ties, centrality, clustering coefficient, small world network. These topics also include online marketing techniques: such as email marketing, search engine optimization, social media marketing, etc. Also students will be expected to conduct quantitative analysis of marketing data, such as MDS, cluster analysis and opinion mining. Course Objectives Nowadays, online marketing has become an influential vehicle of brand awareness and product purchases. In the electronically mediated social network, customers can take the role of word-ofmouth and do the marketing for companies. The key to make this happen is to understand this network and understand customer behavior in this network. Rooted in sociology, psychology and computer science, social network theories can help us make sense of the complicated phenomenon and develop better online marketing strategies. Additional learning objectives include the development of: Written and Oral Communications Skills: multiple individual homework assignments will be used to assess writing skills and the final presentations will be used to assess presentation skills. Teaming Skills: 60% of the deliverables for the course are team deliverables which require students to work effectively in teams to accomplish the overall course objectives. A survey is used to measure individual contributions to team performance. Analytic problem solving skills: Students will use different methods of social network analysis to analyze online data and they will interpret the results pertinent to how they solve a business problem. Ethical Understanding: Students will make a presentation about the ethical issues involved with privacy and data collection on social media. Course Outcomes In general, after completing the course, students will be able to 1. 2. 3. 4. Apply social network theories to enhance understanding of customer need. Apply marketing theories to create online marketing strategies. Analyze networks and online data using NodeXL and R Conduct online marketing campaigns. Pedagogy The course will employ lectures, individual assignments, team presentation and project. Students will engage in the following activities: Attend and participate in the weekly classes. Actively participate in the in-class discussions Read assigned material prior to the indicated class lectures (if required). Prepare homework assignments in accordance with predefined guidelines. Work in teams and attempt to create an information cascade. Moodle will be used as the primary course management tool. You will be automatically enrolled in Moodle once you register for the course. All relevant class materials and class announcements will be also posted on Moodle. Additionally, this course will use two free softwares for analysis (see below). NodeXL: a free Excel template that works on PCs. For Mac users, you will need to acquire PC emulator software on the Mac to get the software to work. R: a free software that works for both PCs and Macs. It is mainly for statistical analysis. Since there are many specialized network packages, students can use R as part of their projects. Required Textbook Watts, D. J. (2004). Six degrees: The Science of A Connected Age. Papers that are related to social networks (see the reading in the table) Page 2 of 6 Additional & Optional Readings Van Den Bulte, C., and Wuyts, S. (2007). Social Networks and Marketing. Marketing Science Institute. Hansen, D. L., Shneiderman, B., and Smith, M. A., (2009). Analyzing Social Media Networks with NodeXL, Morgan Kaufman. Li, C., Benoff., J. (2011). Goundswell. Harvard Business Review Press. Rogers, E. M., (2003). Diffusion of Innovations, Fifth Edition, Free Press. Wikipedia entry reading: Viral Marketing, Graph Theory, Information Cascade, Social Network, Preferential Attachment, Reciprocity (Social Psychology), Homophily, Crowdsourcing, Social Media, Social Capital. Course Components The course will emphasize the various aspects of Online Marketing listed in the syllabus. Class Participation - To enhance the learning experience, all students are expected to participate in class discussions. You are expected to review the assigned readings and materials and be prepared to explain your answers to the assigned materials. Homework – Graded homework will be submitted via Moodle. Late homework submissions will be subject to a 10% deduction. Midterm paper - There will be a midterm group work that aims to analyze twitter data for opinion mining. Students will be expected to give presentations and generate reports Final project: - Students will work in teams to conduct online campaigns and present their results and generate reports. The scale for grades is: A >92; A- 92~90; B+ 89~85; B 84~80; B- 79~75; C+ 74~70; C 69~65; C- 64~60; F<60 The components and their weights are as shown below: Assignment Class Participation Assignments Mid-Term Paper Final paper Total Grade Grade Percent 10% 20% 20% 50% 100% Page 3 of 6 Ethical Conduct The following statement is printed in the Stevens Graduate Catalog and applies to all students taking Stevens courses, on and off campus. “Cheating during in-class tests or take-home examinations or homework is, of course, illegal and immoral. A Graduate Academic Evaluation Board exists to investigate academic improprieties, conduct hearings, and determine any necessary actions. The term ‘academic impropriety’ is meant to include, but is not limited to, cheating on homework, during in-class or take home examinations and plagiarism.“ Consequences of academic impropriety are severe, ranging from receiving an “F” in a course, to a warning from the Dean of the Graduate School, which becomes a part of the permanent student record, to expulsion. Reference: The Graduate Student Handbook, Academic Year 2003-2004 Stevens Institute of Technology, page 10. Consistent with the above statements, all homework exercises, tests and exams that are designated as individual assignments MUST contain the following signed statement before they can be accepted for grading. ____________________________________________________________________ I pledge on my honor that I have not given or received any unauthorized assistance on this assignment/examination. I further pledge that I have not copied any material from a book, article, the Internet or any other source except where I have expressly cited the source. Signature ________________ Date: _____________ Please note that assignments in this class may be submitted to www.turnitin.com, a web-based anti-plagiarism system, for an evaluation of their originality. Page 4 of 6 Course Schedule Week 1 Subjects Course Overview Reading Material / Homework Assignments / Exams Install R & NodeXL Watts, Chapter 1: The Connected Age The representation of networks 2 Technique 1: Email Marketing Wikipedia: Social Networks Wikipedia: Graph Theory Assignment: Adjacency Matrix Watts, Chapter 2: The Origins of A "New" Science 3 Ties, Brokerage and Social Capital Technique 2: Online Advertising Granovetter, M. S. (1973). “The Strength of Weak Ties”. The American Journal of Sociology 78(6): 1360. Burt, R. S. (2001). “Structural holes versus network closure as social capital.” Social capital: Theory and research, 31-56. Watts, Chapter 3: Small Worlds Preferential Attachment 4 Technique 3: Pay per Click Advertising Travers, J., and Milgram, S. “An Experimental Study of the Small World Problem”, Sociometry 32(4, Dec. 1969): 425:443. Wikipedia: Preferential Attachment Watts, Chapter 4: Beyond The Small World. Small-world Networks 5 Technique 4: Affiliate Marketing Barabási, A.L., Albert, R. (1999). “Emergence of scaling in random networks”. Science, 286, 509-512. Wikipedia: Small World Networks Assignment: Distance Matrix and MDS Search in Networks Watts, Chapter 5: Search in Networks. 6 Technique 5: Search Engine Marketing/Optimization Assignment: Cluster Analysis Watts, Chapter 6: Epidemics and Failures 7 Diffusion, Reciprocity and Homophily Technique 6: Social Media Wikipedia: Reciprocity Wikipedia: Homophily Watts, Chapter 7: Decisions, Delusions, and The Madness of Crowds Crowdsourcing 8 Technique 7: Crowdsourcing Ren, J. (2011) “Who's More Creative, Experts or The Crowd?” AMCIS. Wikipedia: Crowdsourcing Page 5 of 6 Week Subjects Reading Material / Homework Assignments / Exams Mid-report due: Sentiment Analysis (Twitter, Amazon, etc) Watts, Chapter 8: Thresholds, Cascades and Predictability Watts, D. J., and Dodds, P. S. (2007). “Influentials, networks, and public opinion formation”. Journal of Consumer Research, 34, 441-458. Social Influence 9 Technique 8: Viral Marketing Watts, D. J., Peretti J., and Frumin, M (2007). “Viral marketing for the real world”. Harvard Business Review. 85 (5). Aral, S., Walker, D. (2012). “Identifying influential and susceptible members of social networks”. Science, 337(6092), 337-341. Incentives and Motives 10 Technique 10: Web Design & Web Analytics Diffusion Networks 11 Technique 11: Mobile Marketing Watts, Chapter 9: Innovation, Adaption and Recovery Watts, Chapter 10: The End of the Beginning Watts, Chapter 11: The World Gets Smaller Consumer Behavior Online Trust Online Technique 12: Customer Relationship Management Why You Shouldn't Trust Internet Comments. Science Blog 13 Online Marketing Case Study Cases in the book of Groundswell 14 Review 12 Final Project Presentations 15 Final paper due in one week Page 6 of 6