Exploring the Tradeoff between Competitive Ratio and Variance in Online-Matching Markets

Pan Xu
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Abstract

. In this paper, we propose an online-matching-based model to study the assignment problems arising in a wide range of online-matching markets, including online recommendations, ride-hailing platforms, and crowdsourcing markets. It features that each assignment can request a random set of resources and yield a random utility, and the two (cost and utility) can be arbitrarily correlated with each other. We present two linear-programming-based parameterized policies to study the tradeoff between the competitive ratio (CR) on the total utilities and the variance on the total number of matches (unweighted version). The first one (SAMP) is simply to sample an edge according to the distribution extracted from the clairvoyant optimal, while the second (ATT) features a time-adaptive attenuation framework that leads to an improvement over the state-of-the-art competitive-ratio result. We also consider the problem under a large-budget assumption and show that SAMP achieves asymptotically optimal performance in terms of competitive ratio.
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在线匹配市场竞争比率与差异权衡研究
. 在本文中,我们提出了一个基于在线匹配的模型来研究广泛的在线匹配市场中出现的分配问题,包括在线推荐、网约车平台和众包市场。它的特点是每个分配可以请求一组随机的资源并产生一个随机的效用,并且两者(成本和效用)可以任意地相互关联。我们提出了两种基于线性规划的参数化策略来研究总效用的竞争比(CR)和总匹配数方差(未加权版本)之间的权衡。第一种方法(SAMP)只是根据从洞察力最优中提取的分布对边缘进行采样,而第二种方法(ATT)具有时间自适应衰减框架,可以改善最先进的竞争比结果。我们还考虑了大预算假设下的问题,并证明了SAMP在竞争比方面达到了渐近最优性能。
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