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Neural Network Approach for Solving Singular Convex Optimization with Bounded Variables

机译:有界变量奇异凸优化的神经网络方法

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Although frequently encountered in many practical applications, singular nonlinear optimization has been always recognized as a difficult problem. In the last decades, classical numerical techniques have been proposed to deal with the singular problem. However, the issue of numerical instability and high computational complexity has not found a satisfactory solution so far. In this paper, we consider the singular optimization problem with bounded variables constraint rather than the common unconstraint model. A novel neural network model was proposed for solving the problem of singular convex optimization with bounded variables. Under the assumption of rank one defect, the original difficult problem is transformed into nonsingular constrained optimization problem by enforcing a tensor term. By using the augmented Lagrangian method and the projection technique, it is proven that the proposed continuous model is convergent to the solution of the singular optimization problem. Numerical simulation further confirmed the effectiveness of the proposed neural network approach.
机译:尽管在许多实际应用中经常遇到,但是奇异的非线性优化一直被认为是一个难题。在最近的几十年中,提出了经典的数值技术来处理奇异问题。但是,到目前为止,数值不稳定和计算复杂性高的问题尚未找到令人满意的解决方案。在本文中,我们考虑有界变量约束而不是公共无约束模型的奇异优化问题。提出了一种新的神经网络模型来解决带变量的奇异凸优化问题。在第一级缺陷的假设下,通过执行张量项将原始困难问题转化为非奇异约束优化问题。通过使用增强拉格朗日方法和投影技术,证明了所提出的连续模型收敛于奇异优化问题的求解。数值模拟进一步证实了所提出的神经网络方法的有效性。

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