基于偏序模型利用面板数据估计个体偏好

A Partial-Order-Based Model to Estimate Individual Preferences Using Panel Data

Management Science · 2017
被引 56
人大 A+FT50UTD24ABS 4*

中文导读

提出一种非参数框架,用偏序表示客户偏好,结合库存和促销数据预测个体购买行为,在真实面板数据上比现有方法更准确。

Abstract

In retail operations, customer choices may be affected by stockout and promotion events. Given panel data with the transaction history of customers, and product availability and promotion data, our goal is to predict future individual purchases. We use a general nonparametric framework in which we represent customers by partial orders of preferences. In each store visit, each customer samples a full preference list of the products consistent with her partial order, forms a consideration set, and then chooses to purchase the most preferred product among the considered ones. Our approach involves: (a) defining behavioral models to build consideration sets as subsets of the products on offer, (b) proposing a clustering algorithm for determining customer segments, and (c) deriving marginal distributions for partial preferences under the multinomial logit model. Numerical experiments on real-world panel data show that our approach allows more accurate, fine-grained predictions for individual purchase behavior compared to state-of-the-art alternative methods. The online appendix is available at https://doi.org/10.1287/mnsc.2016.2683 . This paper was accepted by Vishal Gaur, operations management.

偏序偏好模型面板数据个体购买预测考虑集