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Data Aggregation and Demand Prediction

Author

Listed:
  • Maxime C. Cohen

    (Desautels Faculty of Management, McGill University, Montreal, Quebec H3A 1G5, Canada)

  • Renyu Zhang

    (Department of Decision Sciences and Managerial Economics, Business School, The Chinese University of Hong Kong, Hong Kong, China)

  • Kevin Jiao

    (Stern School of Business, New York University, New York 10012)

Abstract

We study how retailers can use data aggregation and clustering to improve demand prediction. High accuracy in demand prediction allows retailers to effectively manage their inventory as well as mitigate stock-outs and excess supply. A typical retail setting involves predicting demand for hundreds of items simultaneously. Although some items have a large amount of historical data, others were recently introduced and, thus, transaction data can be scarce. A common approach is to cluster several items and estimate a joint model for each cluster. In this vein, one can estimate some model parameters by aggregating the data from several items and other parameters at the individual-item level. We propose a practical method referred to as data aggregation with clustering ( DAC ), which balances the tradeoff between data aggregation and model flexibility. DAC allows us to predict demand while optimally identifying the features that should be estimated at the (i) item, (ii) cluster, and (iii) aggregate levels. We show that the DAC algorithm yields a consistent and normal estimate, along with improved prediction errors relative to the decentralized benchmark, which estimates a different model for each item. Using both simulated and real data, we illustrate DAC ’s improvement in prediction accuracy relative to a wide range of common benchmarks. Interestingly, the DAC algorithm has theoretical and practical advantages and helps retailers uncover meaningful managerial insights.

Suggested Citation

  • Maxime C. Cohen & Renyu Zhang & Kevin Jiao, 2022. "Data Aggregation and Demand Prediction," Operations Research, INFORMS, vol. 70(5), pages 2597-2618, September.
  • Handle: RePEc:inm:oropre:v:70:y:2022:i:5:p:2597-2618
    DOI: 10.1287/opre.2022.2301
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