The Possibilities and Limitations of Private Prediction Markets
Rachel Cummings, David M. Pennock, Jennifer Wortman Vaughan

TL;DR
This paper explores the design of private prediction markets using differential privacy, demonstrating both mechanisms that balance privacy and accuracy and fundamental limitations in dynamic settings.
Contribution
It introduces a differentially private one-shot wagering mechanism and analyzes the impossibility of achieving privacy in dynamic markets with bounded loss.
Findings
Private wagering mechanisms can ensure truthfulness and privacy with trade-offs.
Achieving privacy in dynamic markets with bounded loss is fundamentally limited.
Potential methods to overcome these limitations are proposed.
Abstract
We consider the design of private prediction markets, financial markets designed to elicit predictions about uncertain events without revealing too much information about market participants' actions or beliefs. Our goal is to design market mechanisms in which participants' trades or wagers influence the market's behavior in a way that leads to accurate predictions, yet no single participant has too much influence over what others are able to observe. We study the possibilities and limitations of such mechanisms using tools from differential privacy. We begin by designing a private one-shot wagering mechanism in which bettors specify a belief about the likelihood of a future event and a corresponding monetary wager. Wagers are redistributed among bettors in a way that more highly rewards those with accurate predictions. We provide a class of wagering mechanisms that are guaranteed to…
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Taxonomy
TopicsSports Analytics and Performance · Auction Theory and Applications · Law, Economics, and Judicial Systems
