Censored Exploration and the Dark Pool Problem
Abstract
We introduce and analyze a natural algorithm for multi-venue exploration from censored data, which is motivated by the Dark Pool Problem of modern quantitative finance. We prove that our algorithm converges in polynomial time to a near-optimal allocation policy; prior results for similar problems in stochastic inventory control guaranteed only asymptotic convergence and examined variants in which each venue could be treated independently. Our analysis bears a strong resemblance to that of efficient exploration/ exploitation schemes in the reinforcement learning literature. We describe an extensive experimental evaluation of our algorithm on the Dark Pool Problem using real trading data.
Keywords
Cite
@article{arxiv.1205.2646,
title = {Censored Exploration and the Dark Pool Problem},
author = {Kuzman Ganchev and Michael Kearns and Yuriy Nevmyvaka and Jennifer Wortman Vaughan},
journal= {arXiv preprint arXiv:1205.2646},
year = {2012}
}
Comments
Appears in Proceedings of the Twenty-Fifth Conference on Uncertainty in Artificial Intelligence (UAI2009)