Predict and Match: Prophet Inequalities with Uncertain Supply

Reza Alijani, Siddhartha Banerjee, Sreenivas Gollapudi, Kamesh Munagala, Kangning Wang
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引用次数: 9

Abstract

We consider the problem of selling perishable items to a stream of buyers in order to maximize social welfare. A seller starts with a set of identical items, and each arriving buyer wants any one item, and has a valuation drawn i.i.d. from a known distribution.Each item, however, disappears after an a priori unknown amount of time that we term the horizon for that item. The seller knows the (possibly different) distribution of the horizon for each item, but not its realization till the item actually disappears. As with the classic prophet inequalities, the goal is to design an online pricing scheme that competes with the prophet that knows the horizon and extracts full social surplus (or welfare). Our main results are for the setting where items have independent horizon distributions satisfying the monotone-hazard-rate (MHR) condition. Here, for any number of items, we achieve a constant-competitive bound via a conceptually simple policy that balances the rate at which buyers are accepted with the rate at which items are removed from the system. We implement this policy via a novel technique of matching via probabilistically simulating departures of the items at future times. Moreover, for a single item and MHR horizon distribution with mean μ, we show a tight result: There is a fixed pricing scheme that has competitive ratio at most 2 - 1/μ, and this is the best achievable in this class. We further show that our results are best possible. First, we show that the competitive ratio is unbounded without the MHR assumption even for one item. Further, even when the horizon distributions are i.i.d. MHR and the number of items becomes large, the competitive ratio of any policy is lower bounded by a constant greater than 1, which is in sharp contrast to the setting with identical deterministic horizons.
预测与匹配:供给不确定的先知不等式
为了使社会福利最大化,我们考虑将易腐物品出售给一批买家的问题。卖家从一组相同的物品开始,每个到达的买家都想要任何一件物品,并从已知的分布中得出一个估值。然而,每个项目都会在先验的未知时间之后消失,我们称之为该项目的视界。卖家知道每件商品的视界分布(可能不同),但直到商品真正消失后才知道它的实现。与经典的预言不平等一样,我们的目标是设计一个在线定价方案,与知道未来的预言者竞争,并充分提取社会剩余(或福利)。我们的主要结果是在项目具有满足单调危险率(MHR)条件的独立视界分布的情况下。这里,对于任意数量的商品,我们通过一个概念上简单的策略实现了一个恒定的竞争边界,该策略平衡了买家被接受的速度和商品从系统中移除的速度。我们通过一种新颖的匹配技术,通过概率模拟项目在未来时间的偏离来实现这一策略。此外,对于平均μ的单品和MHR水平分布,我们给出了一个严密的结果:存在一个竞争比不超过2 - 1/μ的固定定价方案,这是该类中可实现的最佳定价方案。我们进一步表明,我们的结果是最好的。首先,我们证明了即使对于一个项目,在没有MHR假设的情况下,竞争比也是无界的。此外,即使视界分布为i.i.d MHR且项目数量变大,任何政策的竞争比都以大于1的常数为下限,这与具有相同确定性视界的设置形成鲜明对比。
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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