Optimal, Truthful, and Private Securities Lending
Emily Diana, Michael Kearns, Seth Neel, Aaron Roth

TL;DR
This paper develops a mechanism for securities lending that maximizes resource usage, incentivizes truthful reporting, and preserves client privacy through differential privacy, applicable to multi-round auctions.
Contribution
It introduces a Bayesian optimal algorithm that is both truthful and private, addressing the challenge of demand privacy in securities lending mechanisms.
Findings
The Bayesian optimal algorithm incentivizes truthful reporting as a dominant strategy.
The proposed algorithm is approximately optimal, private, and truthful.
Application to multi-round auctions without access to true demand distributions.
Abstract
We consider a fundamental dynamic allocation problem motivated by the problem of 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 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…
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