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An approximate subgradient algorithm for unconstrained nonsmooth, nonconvex optimization

机译:无约束非光滑非凸优化的近似次梯度算法

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摘要

In this paper a new algorithm for minimizing locally Lipschitz functions is developed. Descent directions in this algorithm are computed by solving a system of linear inequalities. The convergence of the algorithm is proved for quasidifferentiable semismooth functions. We present the results of numerical experiments with both regular and nonregular objective functions. We also compare the proposed algorithm with two different versions of the subgradient method using the results of numerical experiments. These results demonstrate the superiority of the proposed algorithm over the subgradient method.
机译:在本文中,开发了一种用于最小化局部Lipschitz函数的新算法。该算法中的下降方向是通过求解线性不等式系统来计算的。证明了拟可分半光滑函数的算法收敛性。我们介绍了具有常规和非常规目标函数的数值实验结果。我们还使用数值实验的结果将提出的算法与两种不同版本的次梯度方法进行了比较。这些结果证明了该算法优于次梯度法的优越性。

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