APMLNov 17, 2015

Model-based Dashboards for Customer Analytics

arXiv:1511.05614v31 citations
Originality Incremental advance
AI Analysis

This addresses the need for better model-based dashboards in customer analytics for companies, though it is incremental as it builds on hazard and buy-till-you-die models.

The authors tackled the problem of automating customer analytics by developing a Gaussian Process Propensity Model (GPPM) that predicts individual-level spending using probabilistic, nonparametric methods, and showed it outperforms existing benchmarks in fitting and forecasting spend data from mobile games.

Automating the customer analytics process is crucial for companies that manage distinct customer bases. In such data-rich and dynamic environments, visualization plays a key role in understanding events of interest. These ideas have led to the popularity of analytics dashboards, yet academic research has paid scant attention to these managerial needs. We develop a probabilistic, nonparametric framework for understanding and predicting individual-level spending using Gaussian process priors over latent functions that describe customer spending along calendar time, interpurchase time, and customer lifetime dimensions. These curves form a dashboard that provides a visual model-based representation of purchasing dynamics that is easily comprehensible. The model flexibly and automatically captures the form and duration of the impact of events that influence spend propensity, even when such events are unknown a-priori. We illustrate the use of our Gaussian Process Propensity Model (GPPM) on data from two popular mobile games. We show that the GPPM generalizes hazard and buy-till-you-die models by incorporating calendar time dynamics while simultaneously accounting for recency and lifetime effects. It therefore provides insights about spending propensity beyond those available from these models. Finally, we show that the GPPM outperforms these benchmarks both in fitting and forecasting real and simulated spend data.

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