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考虑交叉销售和替代的数据驱动需求估计与品类规划的机器学习方法

Machine Learning Methods for Data-Driven Demand Estimation and Assortment Planning Considering Cross-Selling and Substitutions

INFORMS journal on computing · 2022
被引 14
人大 BUTD24ABS 3

中文导读

研究将需求估计与品类规划问题转化为三个机器学习子问题,提出协同坐标下降、迁移学习和半监督学习等方法,在真实和半合成数据上显著优于传统方法。

Abstract

This study develops machine learning methods for the data-driven demand estimation and assortment planning problem by addressing three subproblems, that is, demand forecasting simultaneously considering cross-selling and substitutions, estimation of the cross-selling and substitution effects, and assortment optimization. These three subproblems are transformed into three sequentially related machine learning problems: collective demand forecasting, demand inference for cross-selling and substitutions, and assortment rule mining. For collective demand forecasting, related product features are introduced to consider both the cross-selling and substitution effects, and a collaborative coordinate descent method with a good convergence property is developed to make distributed demand forecasting and a global update of related product features. Using the results, demand inference adopts transfer and semisupervised learning methods to tackle the challenge of missing data in quantifying the cross-selling and substitution effects. For assortment rule mining, the assortment rules bridge the gap between prediction and optimization, and the developed heuristics obtain the best assortment using the prior knowledge discovered in demand inference. The computational results on a real-world database and a semisynthetic database show that collective demand forecasting obtained far better results than the standard demand forecasting methods and some popular graph learning methods, and the developed heuristics identified much better assortments than those obtained with the baseline methods. History: Accepted by Ram Ramesh, Area Editor for Data Science and Machine Learning. Funding: This work was supported by the construction base project of discipline innovation and talent introduction plan of Chinese higher educational institutions (111 project) [Grant B16009] and the National Natural Science Foundation of China [Grant 72031002]. Supplemental Material: The online appendices are available at https://doi.org/10.1287/ijoc.2022.1251 .

机器学习需求预测品类规划运营管理数据驱动决策