Oracle-Efficient Online Learning and Auction Design

Miroslav Dudík, Nika Haghtalab, Haipeng Luo, R. Schapire, Vasilis Syrgkanis, Jennifer Wortman Vaughan
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引用次数: 48

Abstract

We consider the design of computationally efficient online learning algorithms in an adversarial setting in which the learner has access to an offline optimization oracle. We present an algorithm called Generalized Followthe- Perturbed-Leader and provide conditions under which it is oracle-efficient while achieving vanishing regret. Our results make significant progress on an open problem raised by Hazan and Koren [1], who showed that oracle-efficient algorithms do not exist in full generality and asked whether one can identify conditions under which oracle-efficient online learning may be possible. Our auction-design framework considers an auctioneer learning an optimal auction for a sequence of adversarially selected valuations with the goal of achieving revenue that is almost as good as the optimal auction in hindsight, among a class of auctions. We give oracle-efficient learning results for: (1) VCG auctions with bidder-specific reserves in singleparameter settings, (2) envy-free item-pricing auctions in multiitem settings, and (3) the level auctions of Morgenstern and Roughgarden [2] for single-item settings. The last result leads to an approximation of the overall optimal Myerson auction when bidders’ valuations are drawn according to a fast-mixing Markov process, extending prior work that only gave such guarantees for the i.i.d. setting.We also derive various extensions, including: (1) oracleefficient algorithms for the contextual learning setting in which the learner has access to side information (such as bidder demographics), (2) learning with approximate oracles such as those based on Maximal-in-Range algorithms, and (3) no-regret bidding algorithms in simultaneous auctions, which resolve an open problem of Daskalakis and Syrgkanis [3].
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oracle -高效在线学习和拍卖设计
我们考虑在对抗设置中设计计算效率高的在线学习算法,其中学习者可以访问离线优化oracle。本文提出了一种广义跟随摄动领导者的算法,并给出了该算法在实现后悔消失的同时具有预言效率的条件。我们的研究结果在Hazan和Koren[1]提出的一个开放问题上取得了重大进展,他们表明,oracle-efficient算法并不完全普遍存在,并询问人们是否可以确定在哪些条件下可以实现oracle-efficient在线学习。我们的拍卖设计框架考虑拍卖师学习一系列对抗性选择估值的最优拍卖,其目标是在一类拍卖中实现几乎与后见之明的最优拍卖一样好的收入。我们给出了oracle高效的学习结果:(1)单参数设置下投标人特定储备金的VCG拍卖,(2)多项目设置下无嫉妒物品定价拍卖,以及(3)单项目设置下Morgenstern和Roughgarden[2]的水平拍卖。最后的结果近似于出价人’估值是根据快速混合马尔可夫过程绘制的,扩展了之前只对i.i.d设置提供这种保证的工作。我们还推导了各种扩展,包括:(1)用于上下文学习设置的oracle高效算法,其中学习者可以访问侧信息(例如投标人人口统计数据),(2)使用近似oracle学习,例如基于最大范围算法的算法,以及(3)同步拍卖中的无遗憾竞价算法,该算法解决了Daskalakis和sygkanis的公开问题[3]。
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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