Biased halfspaces, noise sensitivity, and local Chernoff inequalities

Abstract

A halfspace is a function f\-1,1\n → \0,1\ of the form f(x)=1(a· x>t), where Σi ai2=1. We show that if f is a halfspace with E[f]=ε and a'=i |ai|, then the degree-1 Fourier weight of f is W1(f)=(ε2 (1/ε)), and the maximal influence of f is I(f)=(ε (1,a' (1/ε))). These results, which determine the exact asymptotic order of W1(f) and I(f), provide sharp generalizations of theorems proved by Matulef, O'Donnell, Rubinfeld, and Servedio, and settle a conjecture posed by Kalai, Keller and Mossel. In addition, we present a refinement of the definition of noise sensitivity which takes into consideration the bias of the function, and show that (like in the unbiased case) halfspaces are noise resistant, and, in the other direction, any noise resistant function is well correlated with a halfspace. Our main tools are 'local' forms of the classical Chernoff inequality, like the following one proved by Devroye and Lugosi (2008): Let \ xi \ be independent random variables uniformly distributed in \-1,1\, and let ai∈R+ be such that Σi ai2=1. If for some t≥ 0 we have [Σi ai xi > t]=ε, then [Σi ai xi>t+δ]≤ ε2 holds for δ≤ c/(1/ε), where c is a universal constant.

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