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      OptShrink: An algorithm for improved low-rank signal matrix denoising by optimal, data-driven singular value shrinkage

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          Abstract

          The truncated singular value decomposition (SVD) of the measurement matrix is the optimal solution to the_representation_ problem of how to best approximate a noisy measurement matrix using a low-rank matrix. Here, we consider the (unobservable)_denoising_ problem of how to best approximate a low-rank signal matrix buried in noise by optimal (re)weighting of the singular vectors of the measurement matrix. We exploit recent results from random matrix theory to exactly characterize the large matrix limit of the optimal weighting coefficients and show that they can be computed directly from data for a large class of noise models that includes the i.i.d. Gaussian noise case. Our analysis brings into sharp focus the shrinkage-and-thresholding form of the optimal weights, the non-convex nature of the associated shrinkage function (on the singular values) and explains why matrix regularization via singular value thresholding with convex penalty functions (such as the nuclear norm) will always be suboptimal. We validate our theoretical predictions with numerical simulations, develop an implementable algorithm (OptShrink) that realizes the predicted performance gains and show how our methods can be used to improve estimation in the setting where the measured matrix has missing entries.

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          Exact Matrix Completion via Convex Optimization

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            Matrix Completion With Noise

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              Mixtures of Probabilistic Principal Component Analyzers

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                Author and article information

                Journal
                25 June 2013
                2014-04-18
                Article
                10.1109/TIT.2014.2311661
                1306.6042
                f365ff43-4b50-40ca-862e-69156d22de1f

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

                History
                Custom metadata
                IEEE Transactions on Information Theory, vol. 60, no. 6, pp. 1-17, May 2014
                Published version. The algorithm can be downloaded from http://www.eecs.umich.edu/~rajnrao/optshrink
                math.ST cs.IT math.IT stat.ML stat.TH

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