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Average-case analysis of VCG with approximate resource allocation algorithms

机译:使用近似资源分配算法的VCG平均情况分析

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The Vickrey-Clarke-Groves (VCG) mechanism offers a general technique for resource allocation with payments, ensuring allocative efficiency while eliciting truthful information about preferences. However, VCG relies on exact computation of an optimal allocation of resources, a problem which is often computationally intractable, and VCG that uses an approximate allocation algorithm no longer guarantees truthful revelation of preferences. We present a series of results for computing or approximating an upper bound on agent incentives to misreport their preferences. Our first key result is an incentive bound that uses information about average (not worst-case) performance of an algorithm, which we illustrate using combinatorial auction data. Our second result offers a simple sampling technique for amplifying the difficulty of computing a utility-improving lie. An important consequence of our analysis is an argument that using state-of-the-art algorithms for solving combinatorial allocation problems essentially eliminates agent incentives to lie.
机译:Vickrey-Clarke-Groves(VCG)机制为有偿资源分配提供了一种通用技术,可确保分配效率,同时能得出有关偏好的真实信息。但是,VCG依赖于对资源的最佳分配的精确计算,这是一个通常在计算上难以解决的问题,并且使用近似分配算法的VCG不再保证真实显示偏好。我们提供了一系列结果,用于计算或近似错误地报告代理商偏好的代理商激励上限。我们的第一个关键结果是激励界限,该界限使用有关算法平均(而非最坏情况)性能的信息,我们使用组合拍卖数据进行说明。我们的第二个结果提供了一种简单的采样技术,用于放大计算提高实用性谎言的难度。我们的分析的一个重要结果是,有人认为使用最新算法来解决组合分配问题实际上消除了代理商撒谎的动机。

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