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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Neural network for nonsmooth pseudoconvex optimization with general convex constraints
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Neural network for nonsmooth pseudoconvex optimization with general convex constraints

机译:具有普通凸的NonsMooth伪X优化的神经网络

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In this paper, a one-layer recurrent neural network is proposed for solving a class of nonsmooth, pseudoconvex optimization problems with general convex constraints. Based on the smoothing method, we construct a new regularization function, which does not depend on any information of the feasible region. Thanks to the special structure of the regularization function, we prove the global existence, uniqueness and "slow solution'' character of the state of the proposed neural network. Moreover, the state solution of the proposed network is proved to be convergent to the feasible region in finite time and to the optimal solution set of the related optimization problem subsequently. In particular, the convergence of the state to an exact optimal solution is also considered in this paper. Numerical examples with simulation results are given to show the efficiency and good characteristics of the proposed network. In addition, some preliminary theoretical analysis and application of the proposed network for a wider class of dynamic portfolio optimization are included. (c) 2018 Elsevier Ltd. All rights reserved.
机译:在本文中,提出了一种用于求解一般凸起约束的非流动,伪X优化问题的单层复发性神经网络。基于平滑方法,我们构建一个新的正则化功能,不依赖于可行区域的任何信息。由于正则化功能的特殊结构,我们证明了建议神经网络状态的全球存在,唯一性和“慢速解决方案”特征。此外,所提出的网络的状态解决方案被证明是可行的有限时间内的区域以及随后的相关优化问题的最佳解决方案集。特别地,本文还考虑了状态与精确最佳解决方案的趋同。具有仿真结果的数值例子显示效率和良好所提出的网络特征。此外,还包括一些初步理论分析和拟议网络用于更广泛的动态组合优化的网络。(c)2018 Elsevier Ltd.保留所有权利。

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