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A multivariate Poisson mixture model for marketing applications
Authors:Tom Brijs  Dimitris Karlis †  Gilbert Swinnen  Koen Vanhoof  Geert Wets  Puneet Manchanda ‡
Institution:Department of Economics, Limburgs Universitair Centrum, Universitaire Campus, B-3590 Diepenbeek, Belgium;, Department of Statistics, Athens University of Economics, 76 Patision, Str., 10434 Athens, Greece;, Department of Economics, Limburgs Universitair Centrum, Universitaire Campus, B-3590 Diepenbeek, Belgium;and Graduate School of Business, University of Chicago, 1101 East 58th Street, Chicago, IL 60637, USA
Abstract:This paper describes a multivariate Poisson mixture model for clustering supermarket shoppers based on their purchase frequency in a set of product categories. The multivariate nature of the model accounts for cross-selling effects between the purchases made in different product categories. However, for computational reasons, most multivariate approaches limit the covariance structure by including just one common interaction term, or by not including any covariance at all. Although this reduces the number of parameters significantly, it is often too simplistic as typically multiple interactions exist on different levels. This paper proposes a theoretically more complete variance/covariance structure of the multivariate Poisson model, based on domain knowledge or preliminary statistical analysis of significant purchase interaction effects in the data. Consequently, the model does not contain more parameters than necessary, whilst still accounting for the existing covariance in the data. Practically, retail category managers can use the model to devise customized merchandising strategies.
Keywords:mixture models  clustering  EM algorithm  multivariate Poisson  product purchasing
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