Sample Complexity for Non-Truthful Mechanisms

Proceedings of the 2019 ACM Conference on Economics and Computation(2019)

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摘要
This paper considers the design of non-truthful mechanisms from samples. We identify a parameterized family of mechanisms with strategically simple winner-pays-bid, all-pay, and truthful payment formats. In general (not necessarily downward-closed) single-parameter feasibility environments we prove that the family has low representation and generalization error. Specifically, polynomially many bid samples suffice to identify and run a mechanism that is ε-close in Bayes-Nash equilibrium revenue or welfare to that of the optimal truthful mechanism.
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关键词
all-pay auctions, first-price auctions, mechanism design, non-truthful mechanisms, position auctions, sample complexity
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