Bernoulli factories and black-box reductions in mechanism design

S. Dughmi, Jason D. Hartline, Robert D. Kleinberg, Rad Niazadeh
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引用次数: 14

Abstract

We provide a polynomial-time reduction from Bayesian incentive-compatible mechanism design to Bayesian algorithm design for welfare maximization problems. Unlike prior results, our reduction achieves exact incentive compatibility for problems with multi-dimensional and continuous type spaces. The key technical barrier preventing exact incentive compatibility in prior black-box reductions is that repairing violations of incentive constraints requires understanding the distribution of the mechanism's output, which is typically #P-hard to compute. Reductions that instead estimate the output distribution by sampling inevitably suffer from sampling error, which typically precludes exact incentive compatibility. We overcome this barrier by employing and generalizing the computational model in the literature on "Bernoulli Factories". In a Bernoulli factory problem, one is given a function mapping the bias of an 'input coin' to that of an 'output coin', and the challenge is to efficiently simulate the output coin given only sample access to the input coin. Consider a generalization which we call the "expectations from samples" computational model, in which a problem instance is specified by a function mapping the expected values of a set of input distributions to a distribution over outcomes. The challenge is to give a polynomial time algorithm that exactly samples from the distribution over outcomes given only sample access to the input distributions. In this model we give a polynomial time algorithm for the function given by "exponential weights": expected values of the input distributions correspond to the weights of alternatives and we wish to select an alternative with probability proportional to its weight. This algorithm is the key ingredient in designing an incentive compatible mechanism for bipartite matching, which can be used to make the approximately incentive compatible reduction of Hartline-Malekian-Kleinberg [2015] exactly incentive compatible.
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机构设计中的伯努利工厂和黑盒缩减
我们提供了一个从贝叶斯激励相容机制设计到贝叶斯算法设计的多项式时间化简。与先前的结果不同,我们的约简对具有多维和连续类型空间的问题实现了精确的激励相容。在先前的黑盒约简中,阻碍激励兼容的关键技术障碍是,修复违反激励约束的行为需要理解机制产出的分布,这通常是很难计算的。通过抽样来估计输出分布的减少不可避免地会受到抽样误差的影响,这通常会排除精确的激励兼容性。我们通过在“伯努利工厂”的文献中采用和推广计算模型来克服这一障碍。在伯努利工厂问题中,给定一个映射“输入币”到“输出币”偏差的函数,挑战是在只给定输入币的样本访问权限的情况下有效地模拟输出币。考虑一种我们称之为“样本期望”计算模型的泛化,在这种模型中,问题实例由一个函数指定,该函数将一组输入分布的期望值映射到结果上的分布。挑战在于给出一个多项式时间的算法,该算法在只给出对输入分布的采样访问的情况下,精确地从分布中采样结果。在这个模型中,我们为“指数权重”给出的函数给出了一个多项式时间算法:输入分布的期望值对应于备选项的权重,我们希望以与其权重成比例的概率选择一个备选项。该算法是设计二部匹配激励相容机制的关键要素,可用于使Hartline-Malekian-Kleinberg[2015]的近似激励相容约简完全激励相容。
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