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Linear regression with an unknown permutation: Statistical and computational limits

机译:具有未知排列的线性回归:统计和计算限制

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Consider a noisy linear observation model with an unknown permutation, based on observing y = Π*Ax* + w, where x* ∈ ℝd is an unknown vector, Π* is an unknown n × n permutation matrix, and w ∈ ℝn 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 Π* is exactly and approximately recoverable. On the computational front, we show that the maximum likelihood estimate of Π* is NP-hard to compute, while also providing a polynomial time algorithm when d = 1.
机译:考虑基于观察y =Π* Ax * + w的,具有未知置换的噪声线性观测模型,其中x *∈ℝd是未知向量,Π*是未知的n×n置换矩阵,而w∈ℝn是可加的高斯噪声。我们分析了随机设计设置中置换矩阵恢复的问题,其中矩阵A的项被i.i.d绘制。从标准高斯分布中提取数据,并在信噪比(SNR),样本大小n和维数d上建立了清晰的条件,在该条件下**可以精确且近似地可恢复。在计算方面,我们表明Π*的最大似然估计难以进行NP运算,同时还提供了d = 1时的多项式时间算法。

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