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Metric random matchings with applications (1703.08433v1)

Published 24 Mar 2017 in cs.DS

Abstract: Let $({1,2,\ldots,n},d)$ be a metric space. We analyze the expected value and the variance of $\sum_{i=1}{\lfloor n/2\rfloor}\,d({\boldsymbol{\pi}}(2i-1),{\boldsymbol{\pi}}(2i))$ for a uniformly random permutation ${\boldsymbol{\pi}}$ of ${1,2,\ldots,n}$, leading to the following results: (I) Consider the problem of finding a point in ${1,2,\ldots,n}$ with the minimum sum of distances to all points. We show that this problem has a randomized algorithm that (1) always outputs a $(2+\epsilon)$-approximate solution in expected $O(n/\epsilon2)$ time and that (2) inherits Indyk's~\cite{Ind99, Ind00} algorithm to output a $(1+\epsilon)$-approximate solution in $O(n/\epsilon2)$ time with probability $\Omega(1)$, where $\epsilon\in(0,1)$. (II) The average distance in $({1,2,\ldots,n},d)$ can be approximated in $O(n/\epsilon)$ time to within a multiplicative factor in $[\,1/2-\epsilon,1\,]$ with probability $1/2+\Omega(1)$, where $\epsilon>0$. (III) Assume $d$ to be a graph metric. Then the average distance in $({1,2,\ldots,n},d)$ can be approximated in $O(n)$ time to within a multiplicative factor in $[\,1-\epsilon,1+\epsilon\,]$ with probability $1/2+\Omega(1)$, where $\epsilon=\omega(1/n{1/4})$.

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