DC approximation approaches for sparse optimization
Hoai An Le Thi, Tao Pham Dinh, Hoai Minh Le, Xuan Thanh Vo

TL;DR
This paper introduces a unified DC programming framework for nonconvex approximations of the zero-norm in sparse optimization, providing theoretical analysis and efficient algorithms, with applications in feature selection for SVM.
Contribution
It develops a unifying approach using DC programming for sparse optimization, analyzing approximation consistency and proposing new algorithms with theoretical guarantees.
Findings
Some global and local minimizers of approximate problems are also minimizers of the original.
Stronger equivalence results are obtained using exact penalty techniques.
Algorithms based on DC programming outperform standard methods in numerical experiments.
Abstract
Sparse optimization refers to an optimization problem involving the zero-norm in objective or constraints. In this paper, nonconvex approximation approaches for sparse optimization have been studied with a unifying point of view in DC (Difference of Convex functions) programming framework. Considering a common DC approximation of the zero-norm including all standard sparse inducing penalty functions, we studied the consistency between global minimums (resp. local minimums) of approximate and original problems. We showed that, in several cases, some global minimizers (resp. local minimizers) of the approximate problem are also those of the original problem. Using exact penalty techniques in DC programming, we proved stronger results for some particular approximations, namely, the approximate problem, with suitable parameters, is equivalent to the original problem. The efficiency of…
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Taxonomy
TopicsAdvanced Optimization Algorithms Research · Sparse and Compressive Sensing Techniques · Optimization and Variational Analysis
MethodsSupport Vector Machine
