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Predicting future purchases with the Poisson log-normal model

journal contribution
posted on 2014-01-01, 00:00 authored by G Trinh, C Rungie, M Wright, Carl Driesener, J Dawes
The negative binomial distribution (NBD) has been widely used in marketing for modeling purchase frequency counts, particularly in packaged goods contexts. A key managerially relevant use of this model is Conditional Trend Analysis (CTA)—a method of benchmarking future sales utilizing the NBD conditional expectation. CTA allows brand managers to identify whether the sales change in a second period is accounted for by previous non-, light, or heavy buyers of the brand. Although a useful tool, the conditional prediction of the NBD suffers from a bias: it under predicts what the period-one non-buyer class will do in period two and over predicts the sales contribution of existing buyers. In addition, the NBD's assumption of a gamma-distributed mean purchase rate lacks theoretical support—it is not possible to explain why a gamma distribution should hold. This paper therefore proposes an alternative model using a log-normal distribution in place of the gamma distribution, hence creating a Poisson log-normal (PLN) distribution. The PLN distribution has a stronger theoretical grounding than the NBD as it has a natural interpretation relying on the central limit theorem. Empirical analysis of brands in multiple categories shows that the PLN distribution gives better predictions than the NBD.

History

Journal

Marketing letters

Volume

25

Issue

2

Pagination

219 - 234

Publisher

Springer-Verlag

Location

Berlin, Germany

ISSN

1573-059X

Language

eng

Notes

ATTACH IN PRESS VERSION

Publication classification

C1.1 Refereed article in a scholarly journal

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