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A Low Rank Tensorial Approximations method of computation of Singular Values and Singular Vectors for SVD problem

机译:SVD问题奇异值和奇异矢量计算的低秩张量逼近方法

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A new method of computation of singular values and left and right singular vectors of arbitrary non-square matrices has been proposed. The method permits to avoid solutions of high rank systems of linear equations of singular value decomposition problem, which makes it not sensitive to ill-conditioness of decomposed matrix. On base of Eckart-Young theorem, it was shown that each second order r-rank tensor can be represent as a sum of the first rank r-order "coordinate" tensors. A new system of equations for "coordinate" tensor's generators vectors was obtained. An iterative method of solution of the system was elaborated. Results of the method were compared with classical methods of solutions of singular value decomposition problem.
机译:提出了一种计算任意非平方矩阵的奇异值和左右奇异向量的新方法。该方法可以避免奇异值分解问题的线性方程组的高阶系统的求解,这使其对分解矩阵的病态不敏感。根据Eckart-Young定理,表明每个二阶r秩张量可以表示为一阶r阶“坐标”张量的总和。获得了一个新的方程组,用于“协调”张量生成器矢量。阐述了系统求解的迭代方法。将该方法的结果与奇异值分解问题的经典方法进行了比较。

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