双边配货平台在线配货优化

A. Aouad, D. Sabán
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引用次数: 19

摘要

在在线劳动力市场的激励下,我们考虑了一个双边匹配平台所面临的在线分类优化问题,该平台拥有一组等待与客户匹配的供应商。到达的客户会看到供应商的分类,并可以选择向其中一个发出匹配请求。在平台上停留一段时间后,每个供应商都会审查收到的所有匹配请求,并根据自己的偏好选择是与客户匹配还是不匹配。我们研究了平台应该如何设计在线分类算法,以最大化这种双边设置下的预期匹配数量。我们表明,当供应商不立即接受/拒绝匹配请求时,我们的问题从根本上不同于标准(片面)分类问题,即客户在一组产品中进行选择。我们建立了一个简单的贪婪算法是1/2竞争与最优的千里眼算法,提前知道客户到达的完整序列。然而,与相关的在线分类问题不同,即使在渐近状态下,也没有随机算法可以获得更好的竞争比。为了超越这种普遍的不可能性,我们考虑了供应商偏好由多项Logit和嵌套Logit选择模型描述的结构化设置。我们开发了专门的平衡算法,我们称之为偏好感知,它利用了关于供应商选择模型的一般信息。在某些情况下,由此产生的竞争比率可证明大于对抗到达模型中1-1/e的标准“障碍”。我们的研究结果表明,供应商选择的形式和时机在设计在线双边分类算法中起着关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Assortment Optimization for Two-sided Matching Platforms
Motivated by online labor markets, we consider the online assortment optimization problem faced by a two-sided matching platform that hosts a set of suppliers waiting to match with a customer. Arriving customers are shown an assortment of suppliers, and may choose to issue a match request to one of them. After spending some time on the platform, each supplier reviews all the match requests he has received and, based on his preferences, he chooses whether to match with a customer or to leave unmatched. We study how platforms should design online assortment algorithms to maximize the expected number of matches in such two-sided settings. We show that, when suppliers do not immediately accept/reject match requests, our problem is fundamentally different from standard (one-sided) assortment problems, where customers choose over a set of products. We establish that a simple greedy algorithm is 1/2-competitive against an optimal clairvoyant algorithm that knows in advance the full sequence of customers' arrivals. However, unlike related online assortment problems, no randomized algorithm can achieve a better competitive ratio, even in asymptotic regimes. To advance beyond this general impossibility, we consider structured settings where suppliers' preferences are described by the Multinomial Logit and Nested Logit choice models. We develop specialized balancing algorithms, which we call preference-aware, that leverage general information about the suppliers' choice models. In certain settings, the resulting competitive ratios are provably larger than the standard "barrier" of 1-1/e in the adversarial arrival model. Our results suggest that the shape and timing of suppliers' choices play critical roles in designing online two-sided assortment algorithms.
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