A discrepancy lower bound for information complexity
Abstract
This paper provides the first general technique for proving information lower bounds on two-party unbounded-rounds communication problems. We show that the discrepancy lower bound, which applies to randomized communication complexity, also applies to information complexity. More precisely, if the discrepancy of a two-party function with respect to a distribution is , then any two party randomized protocol computing must reveal at least bits of information to the participants. As a corollary, we obtain that any two-party protocol for computing a random function on must reveal bits of information to the participants. In addition, we prove that the discrepancy of the Greater-Than function is , which provides an alternative proof to the recent proof of Viola \cite{Viola11} of the lower bound on the communication complexity of this well-studied function and, combined with our main result, proves the tight lower bound on its information complexity. The proof of our main result develops a new simulation procedure that may be of an independent interest. In a very recent breakthrough work of Kerenidis et al. \cite{kerenidis2012lower}, this simulation procedure was the main building block for proving that almost all known lower bound techniques for communication complexity (and not just discrepancy) apply to information complexity.
Cite
@article{arxiv.1112.2000,
title = {A discrepancy lower bound for information complexity},
author = {Mark Braverman and Omri Weinstein},
journal= {arXiv preprint arXiv:1112.2000},
year = {2012}
}