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Nonorthogonal approximate joint diagonalization with well-conditioned diagonalizers

机译:条件良好的对角化器的非正交近似联合对角化

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摘要

To make the results reasonable, existing joint diagonalization algorithms have imposed a variety of constraints on diagonalizers. Actually, those constraints can be imposed uniformly by minimizing the condition number of diagonalizers. Motivated by this, the approximate joint diagonalization problem is reviewed as a multiobjective optimization problem for the first time. Based on this, a new algorithm for nonorthogonal joint diagonalization is developed. The new algorithm yields diagonalizers which not only minimize the diagonalization error but also have as small condition numbers as possible. Meanwhile, degenerate solutions are avoided strictly. Besides, the new algorithm imposes few restrictions on the target set of matrices to be diagonalized, which makes it widely applicable. Primary results on convergence are presented and we also show that, for exactly jointly diagonalizable sets, no local minima exist and the solutions are unique under mild conditions. Extensive numerical simulations illustrate the performance of the algorithm and provide comparison with other leading diagonalization methods. The practical use of our algorithm is shown for blind source separation (BSS) problems, especially when ill-conditioned mixing matrices are involved.
机译:为了使结果合理,现有的联合对角化算法对对角化器施加了各种约束。实际上,可以通过最小化对角化器的条件数来统一施加这些约束。因此,将近似联合对角化问题作为多目标优化问题进行了首次研究。在此基础上,提出了一种新的非正交联合对角化算法。新算法产生的对角化器不仅使对角化误差最小化,而且具有尽可能小的条件数。同时,严格避免退化的解决方案。此外,新算法对要对角化的目标矩阵集几乎没有限制,从而使其具有广泛的适用性。给出了收敛的主要结果,我们还表明,对于完全联合对角化的集合,不存在局部最小值,并且在温和条件下解是唯一的。大量的数值模拟说明了该算法的性能,并与其他领先的对角化方法进行了比较。对于盲源分离(BSS)问题,特别是在涉及病态混合矩阵的情况下,我们的算法得到了实际应用。

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