On orthogonal tensors and best rank-one approximation ratio
As is well known, the smallest possible ratio between the spectral norm and the Frobenius norm of an m × n matrix with m ≤ n is 1/%m and is (up to scalar scaling) attained only by matrices having pairwise orthonormal rows. In the present paper, the smallest possible ratio between spectral and Froben...
主要な著者: | Li, Z, Nakatsukasa, Y, Soma, T, Uschmajew, A |
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フォーマット: | Journal article |
言語: | English |
出版事項: |
Society for Industrial and Applied Mathematics
2018
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