Simultaneous diagonalization: the asymmetric, low-rank, and noisy settings.

CoRR(2015)

引用 25|浏览39
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摘要
Simultaneous matrix diagonalization is used as a subroutine in many machine learning problems, including blind source separation and paramater estimation in latent variable models. Here, we extend algorithms for performing joint diagonalization to low-rank and asymmetric matrices, and we also provide extensions to the perturbation analysis of these methods. Our results allow joint diagonalization to be applied in several new settings.
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