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Linear Regression with an Unknown Permutation: Statistical and Computational Limits

Published 9 Aug 2016 in math.ST, cs.IT, math.IT, stat.ML, and stat.TH | (1608.02902v1)

Abstract: Consider a noisy linear observation model with an unknown permutation, based on observing $y = \Pi* A x* + w$, where $x* \in \mathbb{R}d$ is an unknown vector, $\Pi*$ is an unknown $n \times n$ permutation matrix, and $w \in \mathbb{R}n$ is additive Gaussian noise. We analyze the problem of permutation recovery in a random design setting in which the entries of the matrix $A$ are drawn i.i.d. from a standard Gaussian distribution, and establish sharp conditions on the SNR, sample size $n$, and dimension $d$ under which $\Pi*$ is exactly and approximately recoverable. On the computational front, we show that the maximum likelihood estimate of $\Pi*$ is NP-hard to compute, while also providing a polynomial time algorithm when $d =1$.

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