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BLACK-BOX RANDOMIZED REDUCTIONS IN ALGORITHMIC MECHANISM DESIGN

机译:算法设计中的黑盒随机化还原

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摘要

We give the first black-box reduction from approximation algorithms to truthful approximation mechanisms for a non-trivial class of multi-parameter problems. Specifically, we prove that every welfare-maximization problem that admits a fully polynomial-time approximation scheme (FPTAS) and can be encoded as a packing problem also admits a truthful-in-expectation randomized mechanism that is an FPTAS. Our reduction makes novel use of smoothed analysis by employing small perturbations as a tool in algorithmic mechanism design. We develop a "duality" between linear perturbations of the objective function of an optimization problem and of its feasible set, and we use the "primal" and "dual" viewpoints to prove the running time bound and the truthfulness guarantee, respectively, for our mechanism.
机译:对于非平凡的多参数问题,我们给出了从近似算法到真实近似机制的第一个黑盒还原。具体地说,我们证明,每个接受完全多项式时间近似方案(FPTAS)并可以编码为打包问题的福利最大化问题,也都接受一种真实的期望随机化机制,即FPTAS。我们的归纳法通过将小扰动用作算法机制设计中的工具,对平滑分析进行了新颖的利用。我们在优化问题的目标函数及其可行集的线性摄动之间发展出“对偶性”,并使用“原始”和“对偶”观点分别证明了运行时间界限和真实性保证。机制。

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