学习多项目拍卖与(或没有)样品

Yang Cai, C. Daskalakis
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引用次数: 61

摘要

我们提供的算法可以学习简单的拍卖,这些拍卖在多项目多投标人设置下的收入近似最优,适用于广泛的投标人估值,包括单位需求、附加、约束附加、XOS和次附加。我们在两种情况下得到我们的学习结果。第一个是通常研究的设置,其中给出了对投标人分布的样本访问,包括规则分布和具有有限支持的任意分布。在这里,我们的算法在项目和投标人的数量上需要多项式多的样本。第二种是我们引入的更一般的最大最小学习设置,我们给出近似分布,我们试图计算一种机制,其收益对于所有接近我们给出的分布的真实分布都是近似最优的。这些结果更普遍,因为它们暗示了基于样本的结果,并且也适用于我们没有样本访问潜在分布的设置,但通过市场研究或通过观察先前运行的投标人行为间接估计它们,可能不真实的拍卖。我们所有的结果都适用于满足标准(和必要的)跨项目独立性的估值分布。他们还概括和改进了Goldner和Karlin以及Morgenstern和Roughgarden最近的工作,这些工作提供了算法,可以在更有限的环境中使用样本访问分布的可加性、次可加性和单位需求估值来学习近似最优的多项目机制。我们将这些结果推广到完整的单位需求、可加性和XOS设置、可加性投标人和最大最小设置。我们的结果是由新的统一收敛界的假设类下的乘积度量。与由VC维边界导出的边界相比,我们的边界导致样本复杂性的指数级节省,并且具有独立的兴趣。
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Learning Multi-Item Auctions with (or without) Samples
We provide algorithms that learn simple auctions whose revenue is approximately optimal in multi-item multi-bidder settings, for a wide range of bidder valuations including unit-demand, additive, constrained additive, XOS, and subadditive. We obtain our learning results in two settings. The first is the commonly studied setting where sample access to the bidders distributions over valuations is given, for both regular distributions and arbitrary distributions with bounded support. Here, our algorithms require polynomially many samples in the number of items and bidders. The second is a more general max-min learning setting that we introduce, where we are given approximate distributions, and we seek to compute a mechanism whose revenue is approximately optimal simultaneously for all true distributions that are close to the ones we were given. These results are more general in that they imply the sample-based results, and are also applicable in settings where we have no sample access to the underlying distributions but have estimated them indirectly via market research or by observation of bidder behavior in previously run, potentially non-truthful auctions.All our results hold for valuation distributions satisfying the standard (and necessary) independence-across-items property. They also generalize and improve upon recent works of Goldner and Karlin \cite{GoldnerK16} and Morgenstern and Roughgarden \cite{MorgensternR16, which have provided algorithms that learn approximately optimal multi-item mechanisms in more restricted settings with additive, subadditive and unit-demand valuations using sample access to distributions. We generalize these results to the complete unit-demand, additive, and XOS setting, to i.i.d. subadditive bidders, and to the max-min setting.Our results are enabled by new uniform convergence bounds for hypotheses classes under product measures. Our bounds result in exponential savings in sample complexity compared to bounds derived by bounding the VC dimension and are of independent interest.
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