Optimal, truthful, and private securities lending

Emily Diana, Michael Kearns, S. Neel, Aaron Roth
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引用次数: 2

Abstract

We consider a fundamental dynamic allocation problem motivated by the problem of securities lending in financial markets, the mechanism underlying the short selling of stocks. A lender would like to distribute a finite number of identical copies of some scarce resource to n clients, each of whom has a private demand that is unknown to the lender. The lender would like to maximize the usage of the resource --- avoiding allocating more to a client than her true demand --- but is constrained to sell the resource at a pre-specified price per unit, and thus cannot use prices to incentivize truthful reporting. We first show that the Bayesian optimal algorithm for the one-shot problem --- which maximizes the resource's expected usage according to the posterior expectation of demand, given reports --- actually incentivizes truthful reporting as a dominant strategy. Because true demands in the securities lending problem are often sensitive information that the client would like to hide from competitors, we then consider the problem under the additional desideratum of (joint) differential privacy. We give an algorithm, based on simple dynamics for computing market equilibria, that is simultaneously private, approximately optimal, and approximately dominant-strategy truthful. Finally, we leverage this private algorithm to construct an approximately truthful, optimal mechanism for the extensive form multi-round auction where the lender does not have access to the true joint distributions between clients' requests and demands.
最优的、真实的、私人的证券借贷
我们考虑了一个基本的动态配置问题,这个问题是由金融市场上的证券借贷问题引起的,这是股票卖空的机制。出借人希望将某种稀缺资源的有限数量的相同副本分发给n个客户,每个客户都有出借人不知道的私人需求。贷款人希望最大限度地利用资源——避免分配给客户超过其实际需求的资源——但受制于以预先规定的每单位价格出售资源,因此不能用价格来激励如实报告。我们首先展示了单次问题的贝叶斯最优算法——根据给定报告的后验需求期望最大化资源的预期使用——实际上激励诚实报告作为一种主导策略。由于证券借贷问题中的真实需求通常是客户希望对竞争对手隐藏的敏感信息,因此我们在(联合)差分隐私的额外需求下考虑该问题。我们给出了一个基于简单动力学计算市场均衡的算法,该算法同时是私有的、近似最优的和近似优势策略真实的。最后,我们利用该私有算法构建了一个近似真实的最优机制,用于广泛形式的多轮拍卖,其中贷方无法访问客户请求和需求之间的真实联合分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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