缓解选择模型模糊性:一个共识框架及其在品类优化中的应用

Mitigating choice model ambiguity: A consensus framework and its application to assortment optimization

Computers and Operations Research · 2025
被引 0
ABS 3

中文导读

针对选择模型估计中的模糊性问题,提出一个共识框架和性能指标来评估模型可靠性,并在品类优化中验证其能提升决策质量、降低风险,同时提出分解算法大幅缩短求解时间。

Abstract

Discrete choice models have become a popular tool to accurately predict complex choice behavior. Due to a variety of possible error sources, estimated choice models tend to be subject to ambiguity, inducing different optimal decisions of highly varying quality. This study aims at mitigating choice model ambiguity associated with a given set of models in terms of their ability to yield optimal decisions. We propose a framework and a set of performance metrics to assess the reliability of choice models and their induced decisions. The use of this framework is then exemplified in the context of rank-based choice models for assortment optimization. Extensive sets of numerical results suggest that our proposed approaches indeed allow decision-makers to identify choice models that are likely to produce high quality decisions, boosting confidence in using choice models in practice. While robust optimization on the original set of choice models tends to be rather conservative, we then use the proposed metrics to reduce the size of the ambiguity set, allowing us to improve the expected assortment quality and the overall downside risk. Given the practical usefulness of robust optimization in this context, we further propose a decomposition algorithm, solving the optimization problem in a fraction of the original time and revealing that only a few among a large set of choice models are determinant in optimal robust solutions.

离散选择模型品类优化鲁棒优化决策可靠性