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      Regularised PCA to denoise and visualise data

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      Statistics and Computing
      Springer Nature America, Inc

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          A penalized matrix decomposition, with applications to sparse principal components and canonical correlation analysis.

          We present a penalized matrix decomposition (PMD), a new framework for computing a rank-K approximation for a matrix. We approximate the matrix X as circumflexX = sigma(k=1)(K) d(k)u(k)v(k)(T), where d(k), u(k), and v(k) minimize the squared Frobenius norm of X - circumflexX, subject to penalties on u(k) and v(k). This results in a regularized version of the singular value decomposition. Of particular interest is the use of L(1)-penalties on u(k) and v(k), which yields a decomposition of X using sparse vectors. We show that when the PMD is applied using an L(1)-penalty on v(k) but not on u(k), a method for sparse principal components results. In fact, this yields an efficient algorithm for the "SCoTLASS" proposal (Jolliffe and others 2003) for obtaining sparse principal components. This method is demonstrated on a publicly available gene expression data set. We also establish connections between the SCoTLASS method for sparse principal component analysis and the method of Zou and others (2006). In addition, we show that when the PMD is applied to a cross-products matrix, it results in a method for penalized canonical correlation analysis (CCA). We apply this penalized CCA method to simulated data and to a genomic data set consisting of gene expression and DNA copy number measurements on the same set of samples.
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            The Power of Convex Relaxation: Near-Optimal Matrix Completion

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              EM algorithms for ML factor analysis

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                Author and article information

                Journal
                Statistics and Computing
                Stat Comput
                Springer Nature America, Inc
                0960-3174
                1573-1375
                March 2015
                December 13 2013
                March 2015
                : 25
                : 2
                : 471-486
                Article
                10.1007/s11222-013-9444-y
                be52fd30-57bc-47e8-8071-20ddb4e98c00
                © 2015
                History

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