The Competitive Ratio of Threshold Policies for Online Unit-density Knapsack Problems

Will Ma, D. Simchi-Levi, Jinglong Zhao
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引用次数: 2

Abstract

We study an online knapsack problem where the items arrive sequentially and must be either immediately packed into the knapsack or irrevocably discarded. Each item has a different size and the objective is to maximize the total size of items packed. We focus on the class of randomized algorithms which initially draw a threshold from some distribution, and then pack every fitting item whose size is at least that threshold. Threshold policies satisfy many desiderata including simplicity, fairness, and incentive-alignment. We derive two optimal threshold distributions, the first of which implies a competitive ratio of 0.432 relative to the optimal offline packing, and the second of which implies a competitive ratio of 0.428 relative to the optimal fractional packing. We also consider the generalization to multiple knapsacks, where an arriving item has a different size in each knapsack and must be placed in at most one. This is equivalent to the AdWords problem where item truncation is not allowed. We derive a randomized threshold algorithm for this problem which is 0.214-competitive. We also show that any randomized algorithm for this problem cannot be more than 0.461-competitive, providing the first upper bound which is strictly less than 0.5. This online knapsack problem finds applications in many areas, like supply chain ordering, online advertising, and healthcare scheduling, refugee integration, and crowdsourcing. We show how our optimal threshold distributions can be naturally implemented in the warehouses for a Latin American chain department store. We run simulations on their large-scale order data, which demonstrate the robustness of our proposed algorithms.
在线单位密度背包问题阈值策略的竞争比
我们研究了一个在线背包问题,其中物品顺序到达,必须立即装入背包或不可撤销地丢弃。每个物品都有不同的尺寸,目标是最大化物品包装的总尺寸。我们关注的是一类随机化算法,它首先从某个分布中绘制一个阈值,然后将大小至少达到该阈值的每个拟合项目打包。阈值策略满足许多要求,包括简单性、公平性和激励一致性。我们推导了两个最优阈值分布,第一个阈值分布意味着相对于最优离线包装的竞争比为0.432,第二个阈值分布意味着相对于最优分数包装的竞争比为0.428。我们还考虑对多个背包的推广,其中到达的物品在每个背包中具有不同的大小,并且必须最多放置一个。这相当于不允许条目截断的AdWords问题。我们推导了一个随机阈值算法,该算法的竞争系数为0.214。我们还证明了对于这个问题的任何随机算法都不能超过0.461竞争,提供第一个上界严格小于0.5。这个在线背包问题在许多领域都有应用,比如供应链订购、在线广告、医疗保健安排、难民融合和众包。我们将展示如何在拉丁美洲连锁百货商店的仓库中自然地实现我们的最优阈值分布。我们对他们的大规模订单数据进行了模拟,证明了我们提出的算法的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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