Optimality condition and iterative thresholding algorithm for [Formula: see text]-regularization problems

This paper investigates the [Formula: see text]-regularization problems, which has a broad applications in compressive sensing, variable selection problems and sparse least squares fitting for high dimensional data. We derive the exact lower bounds for the absolute value of nonzero entries in each g...

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Bibliographic Details
Published in:SpringerPlus Vol. 5; no. 1; p. 1873
Main Authors: Jiao, Hongwei, Chen, Yongqiang, Yin, Jingben
Format: Journal Article
Language:English
Published: Switzerland 2016
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ISSN:2193-1801, 2193-1801
Online Access:Get full text
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Summary:This paper investigates the [Formula: see text]-regularization problems, which has a broad applications in compressive sensing, variable selection problems and sparse least squares fitting for high dimensional data. We derive the exact lower bounds for the absolute value of nonzero entries in each global optimal solution of the model, which clearly demonstrates the relation between the sparsity of the optimum solution and the choice of the regularization parameter and norm. We also establish the necessary condition for global optimum solutions of [Formula: see text]-regularization problems, i.e., the global optimum solutions are fixed points of a vector thresholding operator. In addition, by selecting parameters carefully, a global minimizer which will have certain desired sparsity can be obtained. Finally, an iterative thresholding algorithm is designed for solving the [Formula: see text]-regularization problems, and any accumulation point of the sequence generated by the designed algorithm is convergent to a fixed point of the vector thresholding operator.
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ISSN:2193-1801
2193-1801
DOI:10.1186/s40064-016-3516-3