Optimality of Correlated Sampling Strategies
Mohammad Bavarian, Badih Ghazi, Elad Haramaty, Pritish Kamath, Ronald, L. Rivest, Madhu Sudan

TL;DR
This paper proves that the well-known correlated sampling strategy is essentially optimal, providing tight bounds on disagreement probability and introducing a new problem called 'constrained agreement' to facilitate the proof.
Contribution
The paper offers a simple proof of the optimality of the Kleinberg-Tardos correlated sampling strategy and introduces the 'constrained agreement' problem to derive tight bounds.
Findings
The disagreement probability of the optimal strategy is at least 2δ/(1+δ) for distributions with total variation distance δ.
The paper establishes tight bounds for the 'constrained agreement' problem.
The results partially answer a recent open question by Rivest.
Abstract
In the "correlated sampling" problem, two players are given probability distributions and , respectively, over the same finite set, with access to shared randomness. Without any communication, the two players are each required to output an element sampled according to their respective distributions, while trying to minimize the probability that their outputs disagree. A well known strategy due to Kleinberg-Tardos and Holenstein, with a close variant (for a similar problem) due to Broder, solves this task with disagreement probability at most , where is the total variation distance between and . This strategy has been used in several different contexts, including sketching algorithms, approximation algorithms based on rounding linear programming relaxations, the study of parallel repetition and cryptography. In this paper, we give a…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Optimization and Search Problems · Cryptography and Data Security
