Neural Network Approach for Semivectorial Bilevel Programming Problem

Yibing Lv
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引用次数: 1

Abstract

A novel neural network approach is proposed for solving semivectorial bilevel programming problem, where the upper level is a scalar-valued optimization problem and the lower level is the linear multiobjective programming. The proposed neural network is proved to be Lyapunov stable and capable of generating optimal solution to the semivectorial BP problem. The numerical result shows that the neural network approach is feasible and efficient.
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半向量双层规划问题的神经网络方法
提出了一种求解半向量双层规划问题的神经网络方法,该方法的上一级是标量优化问题,下一级是线性多目标规划问题。该神经网络具有Lyapunov稳定,能够生成半向量BP问题的最优解。数值结果表明,神经网络方法是可行和有效的。
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