A Seasonal Model with Dropout to Improve Forecasts of Purchase Levels

Author:

Wünderlich Robin123,Wünderlich Nancy V.123,Wangenheim Florian v.123

Affiliation:

1. Robin Wünderlich is Associated Researcher, ETH Zürich, Switzerland (email: ).

2. Nancy V. Wünderlich is Chair of Digital Markets, TU Berlin, Germany (email: ).

3. Florian v. Wangenheim is Chair of Technology Marketing, ETH Zürich, Switzerland (email: ).

Abstract

Predicting future purchase levels is an important and constant challenge for marketing professionals, as purchase patterns often vary over time and across customers. Moreover, purchases often follow individual and cross-sectional seasonal patterns, which affect forecasts of purchase propensity and customer dropout. The authors develop the hierarchical Bayesian seasonal model with dropout (HSMDO), which captures the interrelation between individual and cross-sectional seasonality, purchase, and dropout rates, with the aim of improving forecast accuracy at specific points in time. They perform (1) a parameter recovery analysis with synthetic data; (2) an empirical validation on three noncontractual retail data sets; (3) an analysis of different model variants to isolate the effects of dropout, seasonality, and hierarchical seasonality; and (4) a comparison with several probabilistic models from the marketing literature. The results demonstrate that the HSMDO provides increased forecast accuracy and that tracking errors decrease further with data exhibiting strong seasonality and high customer retention. The HSMDO yields a measure of individual seasonality that has high discriminative power even with sparse data sets and is useful to customer relationship management analysts for customer segmentation, portfolio management, and improvement in the timing of marketing actions.

Publisher

SAGE Publications

Subject

Marketing,Business and International Management

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