强劲的重复首价拍卖

Shipra Agrawal, Eric Balkanski, V. Mirrokni, Balasubramanian Sivan
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引用次数: 1

摘要

我们研究了重复拍卖中收益优化的动态机制,该机制对买家的异质前瞻性和学习行为具有鲁棒性。通常假设购买者要么都是短视的,要么都是无限超前的,并且购买者理解并信任这一机制。这些假设提出了以下问题:当买家群体是异质的时,是否有可能设计出近似的收益最优机制?我们通过考虑具有未知混合的k-前瞻性购买者,短视购买者,无后悔学习者和无政策后悔学习者的异质购买者群体,提供了这个问题的新视角。面对这一群体,我们设计了一个简单的基于状态的机制,以实现最优可实现收益的恒定部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Repeated First Price Auctions
We study dynamic mechanisms for optimizing revenue in repeated auctions, that are robust to heterogeneous forward-looking and learning behavior of the buyers. Typically it is assumed that the buyers are either all myopic or are all infinite lookahead, and that buyers understand and trust the mechanism. These assumptions raise the following question: is it possible to design approximately revenue optimal mechanisms when the buyer pool is heterogeneous? We provide this fresh perspective on the problem by considering a heterogeneous population of buyers with an unknown mixture of k-lookahead buyers, myopic buyers, no-regret-learners and no-policy-regret learners. Facing this population, we design a simple state-based mechanism that achieves a constant fraction of the optimal achievable revenue.
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