LGEMMLJun 6, 2019

Counterfactual Inference for Consumer Choice Across Many Product Categories

arXiv:1906.02635v240 citations
AI Analysis

This work addresses the challenge of personalized marketing and pricing in retail by providing a more accurate model for consumer choice, though it is incremental as it builds on existing probabilistic matrix factorization techniques.

The paper tackles the problem of estimating consumer preferences across multiple product categories by proposing a model that accounts for correlated preferences and time-varying attributes, showing improved accuracy over traditional isolated-category approaches and enabling better identification of price-sensitive consumers.

This paper proposes a method for estimating consumer preferences among discrete choices, where the consumer chooses at most one product in a category, but selects from multiple categories in parallel. The consumer's utility is additive in the different categories. Her preferences about product attributes as well as her price sensitivity vary across products and are in general correlated across products. We build on techniques from the machine learning literature on probabilistic models of matrix factorization, extending the methods to account for time-varying product attributes and products going out of stock. We evaluate the performance of the model using held-out data from weeks with price changes or out of stock products. We show that our model improves over traditional modeling approaches that consider each category in isolation. One source of the improvement is the ability of the model to accurately estimate heterogeneity in preferences (by pooling information across categories); another source of improvement is its ability to estimate the preferences of consumers who have rarely or never made a purchase in a given category in the training data. Using held-out data, we show that our model can accurately distinguish which consumers are most price sensitive to a given product. We consider counterfactuals such as personally targeted price discounts, showing that using a richer model such as the one we propose substantially increases the benefits of personalization in discounts.

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