Making the Most of Your Samples

Zhiyi Huang, Y. Mansour, T. Roughgarden
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引用次数: 124

Abstract

We study the problem of setting a price for a potential buyer with a valuation drawn from an unknown distribution D. The seller has "data" about D in the form of m ≥ 1 i.i.d. samples, and the algorithmic challenge is to use these samples to obtain expected revenue as close as possible to what could be achieved with advance knowledge of D. Our first set of results quantifies the number of samples m that are necessary and sufficient to obtain a (1-ε)-approximation. For example, for an unknown distribution that satisfies the monotone hazard rate (MHR) condition, we prove that Θ(ε-3/2) samples are necessary and sufficient. Remarkably, this is fewer samples than is necessary to accurately estimate the expected revenue obtained for such a distribution by even a single reserve price. We also prove essentially tight sample complexity bounds for regular distributions, bounded-support distributions, and a wide class of irregular distributions. Our lower bound approach, which applies to all randomized pricing strategies, borrows tools from differential privacy and information theory, and we believe it could find further applications in auction theory. Our second set of results considers the single-sample case. While no deterministic pricing strategy is better than 1/2-approximate for regular distributions, for MHR distributions we show how to do better: there is a simple deterministic pricing strategy that guarantees expected revenue at least 0.589 times the maximum possible. We also prove that no deterministic pricing strategy achieves an approximation guarantee better than e/4 ~.68.
充分利用你的样品
我们研究的问题设定一个潜在买家的价格估值来自未知分布D .卖方已经“数据”的形式对D m≥1 i.i.d.样本,和算法的挑战是利用这些样本获取预期收益尽可能提前知道的D所能实现的我们的第一组结果量化m所需样品的数量和足以获得(1 -ε)光纤。例如,对于满足单调危险率(MHR)条件的未知分布,我们证明了Θ(ε-3/2)个样本是充分必要的。值得注意的是,这比通过一个保留价格准确估计这种分布所获得的预期收入所需的样本要少。我们还证明了正则分布、有界支持分布和大量不规则分布的严格样本复杂度界限。我们的下界方法适用于所有随机定价策略,借鉴了差分隐私和信息理论的工具,我们相信它可以在拍卖理论中找到进一步的应用。我们的第二组结果考虑了单样本情况。虽然对于常规分布,确定性定价策略没有优于1/2-近似的,但对于MHR分布,我们展示了如何做得更好:有一个简单的确定性定价策略,可以保证预期收入至少是最大可能的0.589倍。我们还证明了没有一种确定性定价策略能达到比e/4 ~ 0.68更好的近似保证。
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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