Differentially private call auctions and market impact

E Diana, H Elzayn, M Kearns, A Roth… - Proceedings of the 21st …, 2020 - dl.acm.org
Proceedings of the 21st ACM Conference on Economics and Computation, 2020dl.acm.org
We propose and analyze differentially private (DP) mechanisms for call auctions as an
alternative to the complex and ad-hoc privacy efforts that are common in modern electronic
markets. We prove that the number of shares cleared in the DP mechanisms compares
favorably to the non-private optimal and provide a matching lower bound. We analyze the
incentive properties of our mechanisms and their behavior under natural no-regret learning
dynamics by market participants. We include simulation results and connections to the …
We propose and analyze differentially private (DP) mechanisms for call auctions as an alternative to the complex and ad-hoc privacy efforts that are common in modern electronic markets. We prove that the number of shares cleared in the DP mechanisms compares favorably to the non-private optimal and provide a matching lower bound. We analyze the incentive properties of our mechanisms and their behavior under natural no-regret learning dynamics by market participants. We include simulation results and connections to the finance literature on market impact.
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