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Identification of Matrix Joint Block Diagonalization

International Conference on Artificial Intelligence and Statistics (AISTATS), 2020
Abstract

Given a set C={Ci}i=1m\mathcal{C}=\{C_i\}_{i=1}^m of square matrices, the matrix blind joint block diagonalization problem (BJBDP) is to find a full column rank matrix AA such that Ci=AΣiATC_i=A\Sigma_iA^\text{T} for all ii, where Σi\Sigma_i's are all block diagonal matrices with as many diagonal blocks as possible. The BJBDP plays an important role in independent subspace analysis (ISA). This paper considers the identification problem for BJBDP, that is, under what conditions and by what means, we can identify the diagonalizer AA and the block diagonal structure of Σi\Sigma_i, especially when there is noise in CiC_i's. In this paper, we propose a ``bi-block diagonalization'' method to solve BJBDP, and establish sufficient conditions under which the method is able to accomplish the task. Numerical simulations validate our theoretical results. To the best of the authors' knowledge, existing numerical methods for BJBDP have no theoretical guarantees for the identification of the exact solution, whereas our method does.

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