Investigating Purchase Conversion by Uncovering Online Visit Patterns

Marketing Science, 35 (6), 894-914, 2016

Posted: 3 Oct 2010 Last revised: 12 Apr 2017

See all articles by Chang Hee Park

Chang Hee Park

Binghamton University, SUNY

Young-Hoon Park

Cornell University - Samuel Curtis Johnson Graduate School of Management

Date Written: February 1, 2016

Abstract

This research aims to understand and predict online customers' store visit and purchase behaviors. To this end, we develop a model that accounts for different patterns of online store visits at the individual level. Given the latency of visit patterns, we employ a changepoint modeling framework and statistically infer them in a Bayesian approach. The inferences obtained are then used to examine the effects of visit patterns on purchase dynamics across store visits. Using Internet clickstream data at an online retailer, we find that online store visit patterns tend to be clustered with significant variation across customers in terms of the number and size of visit clusters as well as the visit frequencies, both within and between clusters. Furthermore, the conversion rates vary significantly, depending on store visit patterns, such that they tend to be higher at later visits within a visit cluster, compared with earlier visits. The proposed model thereby offers superior fit and predictive performance than benchmark models that ignore clustered visit patterns and their impact on purchase behavior. We demonstrate the model's ability to better identify prospective customers by utilizing their visit patterns, which can assist marketers in scoring customers and making targeting decisions across individuals for marketing activity.

Keywords: Online shopping behavior, Timing models, Changepoint models, Pattern analysis, Bayesian estimation

Suggested Citation

Park, Chang Hee and Park, Young-Hoon, Investigating Purchase Conversion by Uncovering Online Visit Patterns (February 1, 2016). Marketing Science, 35 (6), 894-914, 2016, Available at SSRN: https://ssrn.com/abstract=1685469 or http://dx.doi.org/10.2139/ssrn.1685469

Chang Hee Park (Contact Author)

Binghamton University, SUNY ( email )

P. O. Box 6000
Binghamton, NY 13902-6000
United States

Young-Hoon Park

Cornell University - Samuel Curtis Johnson Graduate School of Management ( email )

Ithaca, NY 14853-6201
United States
(607) 255-3217 (Phone)

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