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Machine Learning for Demand Estimation in Long Tail Markets

Author

Listed:
  • Hammaad Adam

    (Institute for Data, Systems, and Society, Massachusetts Institute of Technology, Cambridge, Massachusetts 02142)

  • Pu He

    (Two Sigma, New York, New York 10013)

  • Fanyin Zheng

    (Decision, Risk, and Operations, Columbia Business School, New York, New York 10025)

Abstract

Random coefficient multinomial logit models are widely used to estimate customer preferences from sales data. However, these estimation models can only allow for products with positive sales; this selection leads to highly biased estimates in long tail markets, that is, markets where many products have zero or low sales. Such markets are increasingly common in areas such as online retail and other online marketplaces. In this paper, we propose a two-stage estimator that uses machine learning to correct for this bias. Our method first uses deep learning to predict the market shares of all products, where the neural network’s structure mirrors the random coefficient multinomial logit model’s data generating process. In the second stage, we use the predictions of the first stage to reweight the observed shares in a way that corrects for the induced bias and maintains the causal interpretation of the structural model. We show that the estimated parameters are consistent in the number of markets. Our method performs well on simulated and real long tail data, producing accurate estimates of customer behavior. These improved estimates can subsequently be used to provide prescriptive policy recommendations on important managerial decisions such as pricing, assortment, and so on.

Suggested Citation

  • Hammaad Adam & Pu He & Fanyin Zheng, 2024. "Machine Learning for Demand Estimation in Long Tail Markets," Management Science, INFORMS, vol. 70(8), pages 5040-5065, August.
  • Handle: RePEc:inm:ormnsc:v:70:y:2024:i:8:p:5040-5065
    DOI: 10.1287/mnsc.2023.4893
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