A Comparative Empirical Study of Discrete Choice Models in Retail Operations

Gerardo Berbeglia, Agustín Garassino, Gustavo J. Vulcano
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引用次数: 44

Abstract

Choice-based demand estimation is a fundamental task in retail operations and revenue management, providing necessary input data for inventory control, assortment, and price-optimization models. The task is particularly difficult in operational contexts where product availability varies over time and customers may substitute into the available options. In addition to the classical multinomial logit (MNL) model and extensions (e.g., nested logit, mixed logit, and latent-class MNL), new demand models have been proposed (e.g., the Markov chain model), and others have been recently revisited (e.g., the rank list-based and exponomial models). At the same time, new computational approaches were developed to ease the estimation function (e.g., column-generation and expectation-maximization (EM) algorithms). In this paper, we conduct a systematic, empirical study of different choice-based demand models and estimation algorithms, including both maximum-likelihood and least-squares criteria. Through an exhaustive set of numerical experiments on synthetic, semisynthetic, and real data, we provide comparative statistics of the predictive power and derived revenue performance of an ample collection of choice models and characterize operational environments suitable for different model/estimation implementations. We also provide a survey of all the discrete choice models evaluated and share all our estimation codes and data sets as part of the online appendix. This paper was accepted by Vishal Gaur, operations management.
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零售经营中离散选择模型的比较实证研究
基于选择的需求估计是零售业务和收入管理中的一项基本任务,为库存控制、分类和价格优化模型提供必要的输入数据。在产品可用性随时间变化且客户可能替换可用选项的操作上下文中,此任务尤其困难。除了经典的多项logit (MNL)模型和扩展(例如,嵌套logit,混合logit和潜在类MNL)之外,还提出了新的需求模型(例如,马尔可夫链模型),并且最近重新讨论了其他模型(例如,基于秩表的模型和指数模型)。同时,开发了新的计算方法来简化估计函数(例如列生成和期望最大化(EM)算法)。在本文中,我们对不同的基于选择的需求模型和估计算法进行了系统的实证研究,包括最大似然准则和最小二乘准则。通过一组详尽的合成、半合成和真实数据的数值实验,我们提供了大量选择模型的预测能力和衍生收益表现的比较统计数据,并描述了适用于不同模型/估计实现的操作环境。我们还提供了所有评估的离散选择模型的调查,并作为在线附录的一部分分享了我们所有的估计代码和数据集。本文被运营管理专业的Vishal Gaur接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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