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Recurrent neural network for computation of generalized eigenvalue problem with real diagonalizable matrix pair and its applications

机译:递归神经网络用对角化矩阵对计算广义特征值问题及其应用

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We present neural networks to compute the left and right eigenvectors of the real diagonalizable matrix pair with real generalized eigenvalues, corresponding to the largest or the smallest generalized eigenvalue. We establish an explicit representation for the solutions of the neural network and analyze the convergence property. We consider how to use the above neural networks for computation of the singular value problem and the generalized singular value problem. In detail, we use our neural networks to compute the left and right singular vectors of a real matrix, corresponding to the largest or the smallest singular value. The right generalized singular vector of matrix pairs, corresponding to the largest or the smallest generalized singular value, can be computed by the neural networks. Numerical examples are given to illustrate our result is reasonable. (C) 2016 Elsevier B.V. All rights reserved.
机译:我们提出了神经网络来计算具有实际广义特征值(对应于最大或最小广义特征值)的实际对角线矩阵对的左右特征向量。我们建立了神经网络解决方案的显式表示形式,并分析了收敛性。我们考虑如何使用上述神经网络来计算奇异值问题和广义奇异值问题。详细地说,我们使用神经网络来计算与最大或最小奇异值相对应的实矩阵的左和右奇异向量。可以通过神经网络计算对应于最大或最小广义奇异值的矩阵对的右广义奇异矢量。数值例子说明了我们的结果是合理的。 (C)2016 Elsevier B.V.保留所有权利。

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