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      Nonconvex Sparse Regularization and Convex Optimization for Bearing Fault Diagnosis

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          Atomic Decomposition by Basis Pursuit

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            Nearly unbiased variable selection under minimax concave penalty

            We propose MC+, a fast, continuous, nearly unbiased and accurate method of penalized variable selection in high-dimensional linear regression. The LASSO is fast and continuous, but biased. The bias of the LASSO may prevent consistent variable selection. Subset selection is unbiased but computationally costly. The MC+ has two elements: a minimax concave penalty (MCP) and a penalized linear unbiased selection (PLUS) algorithm. The MCP provides the convexity of the penalized loss in sparse regions to the greatest extent given certain thresholds for variable selection and unbiasedness. The PLUS computes multiple exact local minimizers of a possibly nonconvex penalized loss function in a certain main branch of the graph of critical points of the penalized loss. Its output is a continuous piecewise linear path encompassing from the origin for infinite penalty to a least squares solution for zero penalty. We prove that at a universal penalty level, the MC+ has high probability of matching the signs of the unknowns, and thus correct selection, without assuming the strong irrepresentable condition required by the LASSO. This selection consistency applies to the case of \(p\gg n\), and is proved to hold for exactly the MC+ solution among possibly many local minimizers. We prove that the MC+ attains certain minimax convergence rates in probability for the estimation of regression coefficients in \(\ell_r\) balls. We use the SURE method to derive degrees of freedom and \(C_p\)-type risk estimates for general penalized LSE, including the LASSO and MC+ estimators, and prove their unbiasedness. Based on the estimated degrees of freedom, we propose an estimator of the noise level for proper choice of the penalty level.
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              Rolling element bearing diagnostics—A tutorial

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                Author and article information

                Journal
                IEEE Transactions on Industrial Electronics
                IEEE Trans. Ind. Electron.
                Institute of Electrical and Electronics Engineers (IEEE)
                0278-0046
                1557-9948
                September 2018
                September 2018
                : 65
                : 9
                : 7332-7342
                Article
                10.1109/TIE.2018.2793271
                5dac9e03-6e58-48f5-8429-91a6f2689d93
                © 2018
                History

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