A proximal cutting plane method using Chebychev center for nonsmooth convex optimization

被引:0
|
作者
Adam Ouorou
机构
[1] CORE-MCN,Orange Labs, Research & Development
来源
Mathematical Programming | 2009年 / 119卷
关键词
90C30; 90C25; 65K05; Nonsmooth optimization; Subgradient; Proximal bundle methods; Cutting plane methods; Convex programming;
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摘要
An algorithm is developed for minimizing nonsmooth convex functions. This algorithm extends Elzinga–Moore cutting plane algorithm by enforcing the search of the next test point not too far from the previous ones, thus removing compactness assumption. Our method is to Elzinga–Moore’s algorithm what a proximal bundle method is to Kelley’s algorithm. Instead of lower approximations used in proximal bundle methods, the present approach is based on some objects regularizing translated functions of the objective function. We propose some variants and using some academic test problems, we conduct a numerical comparative study with Elzinga–Moore algorithm and two other well-known nonsmooth methods.
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