Constrained multi‐location assortment optimization under the multinomial logit model

Başak Bebitoğlu, Alper Şen, Philip Kaminsky
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Abstract

We study the assortment optimization problem in an online setting where a retailer uses multiple distribution centers (DC) to fulfill orders from multiple regions. Customer choice in each region follows a multinomial logit model. Each DC can carry up to a pre‐specified number of products. Outbound shipping cost to a region depends on the DC that ships the order. The problem is to determine which products to carry in each DC and which products to offer for sale in each region to maximize the expected profit. We first show that the problem is NP‐complete. We develop a conic quadratic mixed integer programming formulation and suggest a family of valid inequalities. We also show that a special case with identical choice models can be solved as a linear program. This LP solution approach can be used to develop heuristics for the general case. Numerical experiments show that our conic approach outperforms the mixed integer linear programming formulation and enables us to solve moderately sized instances optimally. The experiments also show that not allowing cross‐shipments or not considering them in assortment decisions may lead to substantial losses and LP‐based heuristics can be effective in practice.
多项logit模型下的约束多地点配货优化
研究了在线环境下零售商使用多个配送中心来完成来自多个地区的订单的分类优化问题。每个地区的客户选择遵循多项式逻辑模型。每个DC可以携带最多预先指定数量的产品。到某个地区的出站运输成本取决于运送订单的DC。问题是确定在每个DC中携带哪些产品,以及在每个区域提供哪些产品以最大化预期利润。我们首先证明了这个问题是NP完全的。给出了一个二次混合整数规划公式,并给出了一系列有效不等式。我们还证明了具有相同选择模型的特殊情况可以用线性规划求解。这种LP解决方法可用于为一般情况开发启发式方法。数值实验表明,我们的方法优于混合整数线性规划公式,使我们能够最优地解决中等规模的实例。实验还表明,不允许交叉运输或在分类决策中不考虑交叉运输可能导致重大损失,基于LP的启发式方法在实践中是有效的。
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