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Noise Stability and Correlation with Half Spaces (1603.01799v1)

Published 6 Mar 2016 in math.PR and cs.CC

Abstract: Benjamini, Kalai and Schramm showed that a monotone function $f : {-1,1}n \to {-1,1}$ is noise stable if and only if it is correlated with a half-space (a set of the form ${x: \langle x, a\rangle \le b}$). We study noise stability in terms of correlation with half-spaces for general (not necessarily monotone) functions. We show that a function $f: {-1, 1}n \to {-1, 1}$ is noise stable if and only if it becomes correlated with a half-space when we modify $f$ by randomly restricting a constant fraction of its coordinates. Looking at random restrictions is necessary: we construct noise stable functions whose correlation with any half-space is $o(1)$. The examples further satisfy that different restrictions are correlated with different half-spaces: for any fixed half-space, the probability that a random restriction is correlated with it goes to zero. We also provide quantitative versions of the above statements, and versions that apply for the Gaussian measure on $\mathbb{R}n$ instead of the discrete cube. Our work is motivated by questions in learning theory and a recent question of Khot and Moshkovitz.

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