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Permutations Unlabeled Beyond Sampling Unknown

机译:超出采样范围的未标记排列未知

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A recent unlabeled sampling result by Unnikrishnan, Haghighatshoar, and Vetterli states that with probability one over Gaussian random matrices A with iid entries, any x can be uniquely recovered from an unknown permutation of y = Ax as soon as A has at least twice as many rows as columns. We show that this condition on Aimplies something much stronger: that an unknown vector x can be recovered from measurements y = T Ax, when the unknown T belongs to an arbitrary set of invertible, diagonalizable linear transformations T. The set T can be finite or countably infinite. When it is the set of m x m permutation matrices, we have the classical unlabeled sampling problem. We show that for almost all A with at least twice as many rows as columns, all x can be recovered either uniquely, or up to a scale depending on T, and that the condition on the size of A is necessary. Our proof is based on vector space geometry. Specializing to permutations, we obtain a simplified proof of the uniqueness result of Unnikrishnan, Haghighatshoar, and Vetterli. In this letter, we are only concerned with uniqueness; stability and algorithms are left for future work.
机译:Unnikrishnan,Haghighatshoar和Vetterli最近未加标签的采样结果表明,高斯随机矩阵A上有iid项的概率为1,只要A至少有两倍多,就可以从y = Ax的未知排列中唯一地恢复任何x。行作为列。我们证明,此条件在A上意味着更强一些:当未知T属于任意一组可逆的可对角线性变换T时,可以从测量y = T Ax中恢复未知矢量x。无穷无尽。当它是m x m个置换矩阵的集合时,我们有经典的未标记采样问题。我们表明,对于几乎所有具有至少两倍于列的行的A,所有x都可以唯一地恢复,也可以根据T的规模进行恢复,并且必须以A的大小为条件。我们的证明基于向量空间几何。专门针对排列,我们获得了Unnikrishnan,Haghighatshoar和Vetterli的唯一性结果的简化证明。在这封信中,我们仅关注唯一性。稳定性和算法留给以后的工作。

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