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A Novel Neural Network Approach for Computing Eigen-Pairs of Real Antisymmetric Matrices

机译:一种用于计算实际反对称矩阵特征对的新型神经网络方法

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In the present paper, we focus on the problem how to compute all eigen-pairs of any real antisymmetric matrix by the conventional neural network approach without modification the original structure of the neural network. Given any n-dimensional real antisymmetric matrix, our proposed method is based on a n-dimensional ODEs and the preprocessing become comparatively easy. The contributions of this paper are mainly come from two aspects, on the one hand, we constructed the eigen-pairs relationship between those of symmetric matrix and anti-symmetric matrix; on the other hand, we presented a simple method to compute all eigen-pairs of any antisymmetric matrix. Simulations verify the computational capability of the proposed method.
机译:在本文中,我们专注于如何通过传统的神经网络方法计算所有真正的反对子矩阵的所有特征对,而无需修改神经网络的原始结构。给定任何N维实际反对二手矩阵,我们所提出的方法基于N维杂散,并且预处理变得相对容易。本文的贡献主要来自两个方面,一方面,我们构建了对称矩阵和反对称矩阵之间的特征对关系;另一方面,我们提出了一种简单的方法来计算任何反对称矩阵的所有特征对。仿真验证了所提出的方法的计算能力。

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