The Stability of MNL-Based Demand under Dynamic Customer Substitution and its Algorithmic Implications

A. Aouad, D. Segev
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引用次数: 7

Abstract

We study the dynamic assortment planning problem under the widely utilized multinomial logit choice model (MNL). In this single-period assortment optimization and inventory management problem, the retailer jointly decides on an assortment, that is, a subset of products to be offered, as well as on the inventory levels of these products, aiming to maximize the expected revenue subject to a capacity constraint on the total number of units stocked. The demand process is formed by a stochastic stream of arriving customers, who dynamically substitute between products according to the MNL model. Although this dynamic setting is extensively studied, the best known approximation algorithm guarantees an expected revenue of at least 0.139 times the optimum, assuming that the demand distribution has an increasing failure rate. In this paper, we establish novel stochastic inequalities showing that, for any given inventory level, the expected demand of each offered product is “stable” under basic algorithmic operations, such as scaling the MNL preference weights and shifting inventory across comparable products. We exploit this sensitivity analysis to devise the first approximation scheme for dynamic assortment planning under the MNL model.
动态客户替代下基于mnl的需求稳定性及其算法启示
研究了在广泛应用的多项式逻辑选择模型(MNL)下的动态分类规划问题。在单周期分类优化和库存管理问题中,零售商共同决定一个分类,即要提供的产品子集,以及这些产品的库存水平,目的是在总库存数量的能力约束下最大化预期收益。需求过程是由随机到达的顾客流构成的,这些顾客根据MNL模型动态地在产品之间进行替代。尽管对这种动态设置进行了广泛的研究,但假设需求分布的故障率不断增加,最著名的近似算法保证预期收益至少是最优收益的0.139倍。在本文中,我们建立了新的随机不等式,表明对于任何给定的库存水平,每个提供产品的预期需求在基本算法操作下是“稳定的”,例如缩放MNL偏好权重和在可比产品之间转移库存。我们利用这种敏感性分析设计了MNL模型下动态分类规划的第一近似方案。
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