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A recurrent neural network for real-time semidefinite programming

机译:用于实时半确定编程的递归神经网络

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摘要

The semidefinite programming problem is an important optimization problem that has been extensively investigated. A real-time solution method for solving such a problem, however, is still not yet available. The paper proposes a recurrent neural network for this purpose. First, an auxiliary cost function is introduced to minimize the duality gap between the admissible points of the primal problem and the corresponding dual problem. Then a dynamical system is constructed to drive the duality gap to zero exponentially along any trajectory by modifying the gradient of the auxiliary cost function. Furthermore, a subsystem is developed to circumvent the computation of matrix inverse, so that the resulting overall dynamical system can be realized using a recurrent neural network. The architecture of the resulting neural network is discussed. The operating characteristics and performance of the proposed approach are demonstrated by means of simulation results.
机译:半定规划问题是已被广泛研究的重要优化问题。然而,用于解决这种问题的实时解决方法仍然不可用。为此,本文提出了一种递归神经网络。首先,引入辅助成本函数以最小化原始问题的容许点与相应的双重问题之间的对偶间隙。然后构造一个动力学系统,通过修改辅助成本函数的梯度,沿任何轨迹将对偶间隙驱动为指数级为零。此外,开发了一个子系统来规避矩阵逆的计算,从而可以使用递归神经网络来实现最终的整体动力学系统。讨论了所得神经网络的体系结构。仿真结果证明了该方法的工作特性和性能。

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