收益最大化的样本复杂度

R. Cole, T. Roughgarden
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引用次数: 243

摘要

在收益最大化拍卖的设计和分析中,拍卖业绩通常是根据投入的先验分布来衡量的。这种分布最明显的来源是过去的数据。本文的目标是了解需要多少数据才能保证接近最优的预期收入。我们的基本模型是单件拍卖,竞标者的估价独立于未知和不相同的分布。卖家“免费”从每一种产品中获得m个样品,并选择一个新样品进行拍卖。m需要多大,作为投标人数量k和ε 0的函数,才能实现最优收益的(1—ε)近似?我们证明了在底层分布的标准尾条件下,m = poly(k, 1/ε)样本是充分必要的。我们的下限与最近许多简单和先验独立拍卖的结果形成鲜明对比,并从根本上涉及投标人竞争、不相同分布和非常接近(但仍然不变)的最优收益近似值之间的相互作用。它有效地表明,实现最优收益的足够好的常数近似值的唯一方法是通过详细了解投标人的估值分布。我们的上界是建设性的,特别适用于经验Myerson拍卖的一种变体,即相对于样本的经验分布运行收益最大化拍卖的自然拍卖。为了捕捉我们的样本复杂度上界如何依赖于允许分布集,我们引入了α-强正则分布,它在正则(α = 0)和MHR (α = 1)分布之间插值。我们提供证据证明这一定义具有独立的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The sample complexity of revenue maximization
In the design and analysis of revenue-maximizing auctions, auction performance is typically measured with respect to a prior distribution over inputs. The most obvious source for such a distribution is past data. The goal of this paper is to understand how much data is necessary and sufficient to guarantee near-optimal expected revenue. Our basic model is a single-item auction in which bidders' valuations are drawn independently from unknown and nonidentical distributions. The seller is given m samples from each of these distributions "for free" and chooses an auction to run on a fresh sample. How large does m need to be, as a function of the number k of bidders and ε 0, so that a (1 -- ε)-approximation of the optimal revenue is achievable? We prove that, under standard tail conditions on the underlying distributions, m = poly(k, 1/ε) samples are necessary and sufficient. Our lower bound stands in contrast to many recent results on simple and prior-independent auctions and fundamentally involves the interplay between bidder competition, non-identical distributions, and a very close (but still constant) approximation of the optimal revenue. It effectively shows that the only way to achieve a sufficiently good constant approximation of the optimal revenue is through a detailed understanding of bidders' valuation distributions. Our upper bound is constructive and applies in particular to a variant of the empirical Myerson auction, the natural auction that runs the revenue-maximizing auction with respect to the empirical distributions of the samples. To capture how our sample complexity upper bound depends on the set of allowable distributions, we introduce α-strongly regular distributions, which interpolate between the well-studied classes of regular (α = 0) and MHR (α = 1) distributions. We give evidence that this definition is of independent interest.
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