Bounded-Loss Private Prediction Markets
Abstract
Prior work has investigated variations of prediction markets that preserve participants' (differential) privacy, which formed the basis of useful mechanisms for purchasing data for machine learning objectives. Such markets required potentially unlimited financial subsidy, however, making them impractical. In this work, we design an adaptively-growing prediction market with a bounded financial subsidy, while achieving privacy, incentives to produce accurate predictions, and precision in the sense that market prices are not heavily impacted by the added privacy-preserving noise. We briefly discuss how our mechanism can extend to the data-purchasing setting, and its relationship to traditional learning algorithms.
Cite
@article{arxiv.1703.00899,
title = {Bounded-Loss Private Prediction Markets},
author = {Rafael Frongillo and Bo Waggoner},
journal= {arXiv preprint arXiv:1703.00899},
year = {2018}
}
Comments
Full version of 2018 NIPS paper. 17 pages single-column, 7 appendix