Publication | Open Access
Iteratively Linearized Reweighted Alternating Direction Method of Multipliers for a Class of Nonconvex Problems
37
Citations
40
References
2018
Year
Mathematical ProgrammingNumerical AnalysisNonconvex ProblemsEngineeringMachine LearningUnconstrained OptimizationMultipliers Encounters TroublesComplementarity ProblemsDerivative-free OptimizationApproximation TheoryLinear OptimizationContinuous OptimizationInverse ProblemsComputer ScienceNondifferentiable OptimizationSignal ProcessingQuadratic ProgrammingCritical PointConvex Optimization
In this paper, we consider solving a class of nonconvex and nonsmooth problems frequently appearing in signal processing and machine learning research. The traditional alternating direction method of multipliers encounters troubles in both mathematics and computations in solving the nonconvex and nonsmooth subproblem. In view of this, we propose a reweighted alternating direction method of multipliers. In this algorithm, all subproblems are convex and easy to solve. We also provide several guarantees for the convergence and prove that the algorithm globally converges to a critical point of an auxiliary function with the help of the Kurdyka-Łojasiewicz property. Several numerical results are presented to demonstrate the efficiency of the proposed algorithm.
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