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A Cross-Cohort Changepoint Model for Customer-Base Analysis
Author(s) -
Arun Gopalakrishnan,
Eric T. Bradlow,
Peter S. Fader
Publication year - 2016
Publication title -
marketing science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 5.938
H-Index - 127
eISSN - 1526-548X
pISSN - 0732-2399
DOI - 10.1287/mksc.2016.1007
Subject(s) - pooling , cohort , computer science , econometrics , database transaction , bayesian probability , transaction data , bayesian inference , exploit , markov chain monte carlo , statistics , artificial intelligence , economics , database , mathematics , computer security
We introduce a new methodology that can capture and explain differences across a series of cohorts of new customers in a repeat-transaction setting. More specifically, this new framework, which we call a vector changepoint model, exploits the underlying regime structure in a sequence of acquired customer cohorts to make predictive statements about new cohorts for which the firm has little or no longitudinal transaction data. To accomplish this, we develop our model within a hierarchical Bayesian framework to uncover evidence of (latent) regime changes for each cohort-level parameter separately, while disentangling cross-cohort changes from calendar-time changes. Calibrating the model using multicohort donation data from a nonprofit organization, we find that holdout predictions for new cohorts using this model have greater accuracy—and greater diagnostic value—compared to a variety of strong benchmarks. Our modeling approach also highlights the perils of pooling data across cohorts without accounting for ...

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