Estimating Primary Demand for a Heterogeneous-Groups Product Category under Hierarchical Consumer Choice Model

Haengju Lee, Y. Eun
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引用次数: 5

Abstract

Abstract This paper discusses the estimation of primary demand (i.e., the true demand before the stockout-based substitution effect occurs) for a heterogeneous-groups product category that is sold in the department store setting, based on historical sales data, product availability, and market share information. For such products, a hierarchical consumer choice model can better represent purchasing behavior. This means that choice occurs on multiple levels: A consumer might choose a particular product group on the first level and purchase a product within that chosen group on the second level. Hence, in the present study, we used the nested multinomial logit (NMNL) choice model for the hierarchical choice and combined it with non-homogeneous Poisson arrivals over multiple periods. The expectation-maximization (EM) algorithm was applied to estimate the primary demand while treating the observed sales data as an incomplete observation of that demand. We considered the estimation problem as an optimization problem in terms of the inter-product-group heterogeneity, and this approach relieves the revenue management system of the computational burden of using a nonlinear optimization package. We subsequently tested the procedure with simulated data sets. The results confirmed that our algorithm estimates the demand parameters effectively for data sets with a high level of inter-product-group heterogeneity.
层次消费者选择模型下异质群体产品类别的初级需求估计
摘要本文基于历史销售数据、产品可用性和市场份额信息,讨论了在百货商店环境中销售的异质群体产品类别的初级需求估计(即基于缺货的替代效应发生之前的真实需求)。对于这类产品,分层消费者选择模型可以更好地表示购买行为。这意味着选择发生在多个层次上:消费者可能在第一级选择特定的产品组,并在第二级购买所选组中的产品。因此,在本研究中,我们使用嵌套多项式logit (NMNL)选择模型进行分层选择,并将其与多个时期的非齐次泊松到达相结合。期望最大化(EM)算法用于估计主要需求,同时将观察到的销售数据视为对该需求的不完全观察。我们将估计问题视为产品组间异质性的优化问题,这种方法减轻了使用非线性优化包的收益管理系统的计算负担。我们随后用模拟数据集测试了该程序。结果证实,我们的算法有效地估计了具有高水平的产品组间异质性的数据集的需求参数。
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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来源期刊
IIE Transactions
IIE Transactions 工程技术-工程:工业
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4.5 months
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