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Functional van den Berg-Kesten-Reimer Inequalities and their Duals, with Applications (1508.07267v2)

Published 28 Aug 2015 in math.PR and math.CO

Abstract: The BKR inequality conjectured by van den Berg and Kesten in [11], and proved by Reimer in [8], states that for $A$ and $B$ events on $S$, a finite product of finite sets $S_i,i=1,\ldots,n$, and $P$ any product measure on $S$, $$ P(A \Box B) \le P(A)P(B),$$ where the set $A \Box B$ consists of the elementary events which lie in both $A$ and $B$ for `disjoint reasons.' Precisely, with ${\bf n}:={1,\ldots,n}$ and $K \subset {\bf n}$, for ${\bf x} \in S$ letting $[{\bf x}]K={{\bf y} \in S: y_i = x_i, i \in K}$, the set $A \Box B$ consists of all ${\bf x} \in S$ for which there exist disjoint subsets $K$ and $L$ of ${\bf n}$ for which $[{\bf x}]_K \subset A$ and $[{\bf x}]_L \subset B$. The BKR inequality is extended to the following functional version on a general finite product measure space $(S,\mathbb{S})$ with product probability measure $P$, $$E\left{ \max{\stackrel{K \cap L = \emptyset}{K \subset {\bf n}, L \subset {\bf n}}} \underline{f}K({\bf X})\underline{g}_L({\bf X})\right} \leq E\left{f({\bf X})\right}\,E\left{g({\bf X})\right},$$ where $f$ and $g$ are non-negative measurable functions, $\underline{f}_K({\bf x}) = {\rm ess} \inf{{\bf y} \in [{\bf x}]K}f({\bf y})$ and $\underline{g}_L({\bf x}) = {\rm ess} \inf{{\bf y} \in [{\bf x}]L}g({\bf y}).$ The original BKR inequality is recovered by taking $f({\bf x})={\bf 1}_A({\bf x})$ and $g({\bf x})={\bf 1}_B({\bf x})$, and applying the fact that in general ${\bf 1}{A \Box B} \le \max_{K \cap L = \emptyset} \underline{f}_K({\bf x}) \underline{g}_L({\bf x})$. Related formulations, and functional versions of the dual inequality on events by Kahn, Saks, and Smyth [6], are also considered. Applications include order statistics, assignment problems, and paths in random graphs.

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