多属性(情境)选择模型下的品类与定价优化

Assortment and Price Optimization Under a Multiattribute (Contextual) Choice Model

Operations Research · 2026
被引 1 · 同刊同年前 7%
人大 AFT50UTD24ABS 4*

中文导读

研究了在情境依赖选择模型(情境凹性模型)下,零售商如何优化品类和定价,发现忽略情境效应会导致利润损失3%到63%。

Abstract

Context-Dependent Choice and Retail Decisions Traditional assortment models assume that consumers evaluate products independently of the alternatives available (i.e., the “context”). In “Assortment and Price Optimization Under a Multiattribute (Contextual) Choice Model,” the authors challenge this assumption by analyzing assortment and pricing decisions under a context-dependent choice framework known as the contextual concavity (CC) model. The CC model incorporates reference dependence across multiple attributes, such as price and quality, and captures well-documented context effects, including compromise and decoy effects. The study makes several contributions. It characterizes the structure of optimal assortments under multiattribute loss aversion, develops a polynomial-size mixed-integer linear programming formulation for solving the general problem, and analyzes the joint assortment and pricing decision. Numerical experiments show that ignoring context effects, by relying on standard context-independent models such as the multinomial logit, can lead to substantial profit losses, with gaps ranging from 3% to 63%. These findings highlight the strategic importance of incorporating contextual effects into retail decisions.

品类优化定价策略消费者选择模型情境效应