Douglas-Rachford splitting for nonconvex optimization with application to nonconvex feasibility problems
Guoyin Li, Ting Kei Pong

TL;DR
This paper adapts the Douglas-Rachford splitting method to nonconvex feasibility problems, establishing convergence properties and demonstrating its effectiveness in finding sparse solutions compared to existing methods.
Contribution
It extends the Douglas-Rachford splitting method to nonconvex optimization, providing convergence analysis and practical application insights.
Findings
Convergence to stationary points under certain conditions.
Boundedness of generated sequences with specific set assumptions.
Preliminary numerical results show improved performance over alternating projection.
Abstract
We adapt the Douglas-Rachford (DR) splitting method to solve nonconvex feasibility problems by studying this method for a class of nonconvex optimization problem. While the convergence properties of the method for convex problems have been well studied, far less is known in the nonconvex setting. In this paper, for the direct adaptation of the method to minimize the sum of a proper closed function and a smooth function with a Lipschitz continuous gradient, we show that if the step-size parameter is smaller than a computable threshold and the sequence generated has a cluster point, then it gives a stationary point of the optimization problem. Convergence of the whole sequence and a local convergence rate are also established under the additional assumption that and are semi-algebraic. We also give simple sufficient conditions guaranteeing the boundedness of the sequence…
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