A conjugate subgradient algorithm with adaptive preconditioning for the least absolute shrinkage and selection operator minimization


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Abstract

This paper describes a new efficient conjugate subgradient algorithm which minimizes a convex function containing a least squares fidelity term and an absolute value regularization term. This method is successfully applied to the inversion of ill-conditioned linear problems, in particular for computed tomography with the dictionary learning method. A comparison with other state-of-art methods shows a significant reduction of the number of iterations, which makes this algorithm appealing for practical use.

About the authors

A. Mirone

European Synchrotron Radiation Facility

Author for correspondence.
Email: mirone@ESRF.FR
France, Grenoble Cedex, F-38043

P. Paleo

European Synchrotron Radiation Facility

Email: mirone@ESRF.FR
France, Grenoble Cedex, F-38043

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