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基于效用排名截断的多项Logit模型下的品类优化

Assortment Optimization Under the Multinomial Logit Model with Utility-Based Rank Cutoffs

Operations Research · 2023
被引 18
人大 AFT50UTD24ABS 4*

中文导读

改进了多项Logit模型,允许顾客在找不到前几个偏好选项时放弃购买,并开发了寻找收益最大化的产品组合算法。

Abstract

Augmenting the Modeling Power of the Multinomial Logit Model Using choice models to capture customer choice behavior has steadily become the common practice in revenue management. Discrete choice models allow one to capture the fact that customers substitute among the offered products, so if a particular product is not offered, then a portion of the customers interested in this product will substitute into a suitable available alternative. The multinomial logit model is one of the most commonly used choice models to capture customer choice in practice. This choice model is based on the utility maximization framework. A customer associates random utilities with the products, as well as the no-purchase option, in which case, the customer purchases the product with the largest utility, as long as its utility exceeds that of the no-purchase option. In “Assortment Optimization under the Multinomial Logit Model with Utility-Based Rank Cutoffs,“ Bai, Feldman, Topaloglu, and Wagner augment the modeling flexibility of the multinomial logit model, where a customer also leaves without a purchase if she cannot find one of her top few choices. They develop algorithms to find revenue-maximizing assortments.

收益管理离散选择模型品类优化消费者行为