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Proximal bundle methods for nonsmooth DC programming

机译:用于非光滑直流编程的近端捆绑方法

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We consider the problem of minimizing the difference of two nonsmooth convex functions over a simple convex set. To deal with this class of nonsmooth and nonconvex optimization problems, we propose new proximal bundle algorithms and show that the given approaches generate subsequences of iterates that converge to critical points. Trial points are obtained by solving strictly convex master programs defined by the sum of a convex cutting-plane model and a freely-chosen Bregman function. In the unconstrained case with the Bregman function being the Euclidean distance, new iterates are solutions of strictly convex quadratic programs of limited sizes. Stronger convergence results (d-stationarity) can be achieved depending on (a) further assumptions on the second DC component of the objective function and (b) solving possibly more than one master program at certain iterations. The given approaches are validated by encouraging numerical results on some academic DC programs.
机译:我们考虑在简单的凸集中最小化两个非光滑凸起功能差异的问题。要处理这类非围栏和非核心优化问题,我们提出了新的近端束算法,并显示给定的方法生成迭代迭代的后续术语。通过求解由凸面平面模型和可自由所选择的Bregman功能定义的严格凸的主程序来获得试点。在不受约束的案例中,通过欧几里德距离的Bregman函数,新迭代是严格凸二次方案的有限尺寸的解决方案。可以根据(a)在物镜函数的第二DC分量上的进一步假设和(b)在某些迭代处解决多个主程序的另一个主程序来实现更强的收敛结果(a)的进一步假设。通过鼓励某些学术直流计划的数值结果验证给定的方法。

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