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The roles of multiple channels in predicting website visits and purchases: Engagers versus closers
Institution:1. Department of Industrial Engineering, University of Chile, Beauchef 851, Santiago, Chile;2. Columbia Business School, 3022 Broadway, New York, NY 10027, United States;3. Retail Management Institute at the Leavey School of Business at Santa Clara University, 500 El Camino Real, Santa Clara, CA 95053, United States;1. Lee Shau Kee School of Business and Administration, Hong Kong Metropolitan University, Hong Kong;2. The Henry Rutgers Professor of Marketing, Rutgers University Camden, United States;3. Department of Marketing, Hong Kong Polytechnic University, Hong Kong;1. Essec Business School, 3 Av. Bernard Hirsch, 95000 Cergy, France;2. Ivey Business School, Western University, 1255 Western Rd, London, ON N6G 0N1, Canada;3. Carson College of Business, Washington State University, 300 NE College Ave, Pullman, WA 99163, United States;1. UQ Business School, University of Queensland, Colin Clark, 39 Blair Dr, St Lucia, QLD 4067, Australia;2. School of Marketing, UNSW Business School, University of New South Wales, Sydney 2052, NSW, Australia;1. Opus College of Business, 1000 LaSalle Avenue, Minneapolis, MN 55403, United States;2. Muma College of Business, 4202 East Fowler Avenue, Tampa, FL 33620, United States;3. Seidman College of Business, 50 Front Avenue SW, Grand Rapids, MI 49504, United States;4. Farmer School of Business, 800 E. High Street, Oxford, OH 45056, United States;1. Head Office, Agricultural Bank of China, Beijing 100005, China;2. Department of Marketing, School of Economics and Management, Tsinghua University, Beijing 100084, China;3. Department of Business Administration, School of Management, Hainan University, Haikou 570228, China;1. Faculty of Business Administration and Centre for Cognitive and Brain Sciences, University of Macau, Taipa, Macau;2. Department of Marketing, Hong Kong University of Science and Technology, Clearwater Bay, Hong Kong
Abstract:In today’s online environment, consumers and sellers interact through multiple channels such as email, search engines, banner ads, affiliate websites and comparison-shopping websites. In this paper, we investigate whether knowing the history of channels the consumer has used until a point of time is predictive of their future visit patterns and purchase conversions. We propose a model in which future visits and conversions are stochastically dependent on the channels a consumer used on their path up to a point. Salient features of our model are: (1) visits by consumers are allowed to be clustered, which enables separation of their visits into intra- and inter-session components, (2) interaction effects between channels where prior visits and conversions from channels impact future inter-session visits, intra-session visits and conversions through a latent variable reflecting the cumulative weighted inventory of prior visits, (3) each channel attracts inter-session and intra-session visits differently, (4) each channel has different association with conversion conditional on a customer’s arrival to the website through that channel, (5) each channel engages customers differently (i.e., keeps the customer alive for a next session or for a next visit within a session), (6) the channel from which there was an arrival in the previous session can have an enhanced ability to generate an arrival for the same channel in the current session (channel persistence), and (7) parsimonious specification for high dimensionality in a low-velocity, sparse-data environment. We estimate the model on easy-to-collect first-party data obtained from an online retailer selling a durable good and find that information on the identities of channels and incorporation of inter- and intra-session visits have significant predictive power for future visitation and conversion behavior. We find that some channels act as “closers” and others as “engagers”—consumers arriving through the former are more likely to make a purchase, while consumers arriving through the latter, even if they do not make a purchase, are more likely to visit again in the future or extend the current session. We also find that some channels engage customers more than others, and that there are interaction effects between the channels visited. Our estimates show that the effect of prior inventory of visits is different from the immediate prior visit, and that visit and purchase probabilities can increase or decrease based on the history of channels used. We discuss several managerial implications of the model including using the predictions of the model to aid in selecting customers for marketing actions and using the model to evaluate a policy change regarding the obscuring of channel information.
Keywords:Customer journey  Path to purchase  Multichannel marketing  Probability models
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