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Stable compressive low rank Toeplitz covariance estimation without regularization

机译:无需正则化的稳定压缩低秩Toeplitz协方差估计

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This paper considers the problem of reconstructing a N × N low rank positive semidefinite Toeplitz matrix from a noisy compressed sketch of size O(√r) × O (√r) where r N is the rank of the matrix. A novel algorithm is proposed which only exploits a positive semidefinite (PSD) constraint to denoise the compressed sketch using a simple least squares approach. A major advantage of our algorithm is that it does not require any regularization parameter. The PSD constraint, along with Vandermonde representation of PSD Toeplitz matrices are proved to be sufficient for stable reconstruction in presence of bounded noise.
机译:本文考虑了从大小为O(√r)×O(√r)的有噪压缩草图中重建N×N低秩正半定Toeplitz矩阵的问题,其中r << N是矩阵的秩。提出了一种新颖的算法,该算法仅利用正半定(PSD)约束使用简单的最小二乘法来对压缩草图进行降噪。我们算法的主要优点是它不需要任何正则化参数。事实证明,PSD约束以及PSD Toeplitz矩阵的Vandermonde表示足以在有界噪声的情况下稳定重建。

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