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Iterative Reweighted Minimization Methods for lpl_plp​ Regularized Unconstrained Nonlinear Programming

29 September 2012
Zhaosong Lu
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Abstract

In this paper we study general lpl_plp​ regularized unconstrained minimization problems. In particular, we derive lower bounds for nonzero entries of first- and second-order stationary points, and hence also of local minimizers of the lpl_plp​ minimization problems. We extend some existing iterative reweighted l1l_1l1​ (IRL1) and l2l_2l2​ (IRL2) minimization methods to solve these problems and proposed new variants for them in which each subproblem has a closed form solution. Also, we provide a unified convergence analysis for these methods. In addition, we propose a novel Lipschitz continuous ϵ\epsilonϵ-approximation to ∥x∥pp\|x\|^p_p∥x∥pp​. Using this result, we develop new IRL1 methods for the lpl_plp​ minimization problems and showed that any accumulation point of the sequence generated by these methods is a first-order stationary point, provided that the approximation parameter ϵ\epsilonϵ is below a computable threshold value. This is a remarkable result since all existing iterative reweighted minimization methods require that ϵ\epsilonϵ be dynamically updated and approach zero. Our computational results demonstrate that the new IRL1 method is generally more stable than the existing IRL1 methods [21,18] in terms of objective function value and CPU time.

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