A superlinear space decomposition algorithm for constrained nonsmooth convex program
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摘要
A class of constrained nonsmooth convex optimization problems, that is, piecewise C2 convex objectives with smooth convex inequality constraints are transformed into unconstrained nonsmooth convex programs with the help of exact penalty function. The objective functions of these unconstrained programs are particular cases of functions with primal–dual gradient structure which has connection with VU space decomposition. Then a VU space decomposition method for solving this unconstrained program is presented. This method is proved to converge with local superlinear rate under certain assumptions. An illustrative example is given to show how this method works.
论文关键词:Nonsmooth optimization,Piecewise C2,VU decomposition,Second-order expansion
论文评审过程:Received 12 June 2009, Revised 10 December 2009, Available online 21 December 2009.
论文官网地址:https://doi.org/10.1016/j.cam.2009.12.018