Biquadratic tensors, biquadratic decompositions, and norms of biquadratic tensors

被引:0
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作者
Liqun Qi
Shenglong Hu
Xinzhen Zhang
Yanwei Xu
机构
[1] Huawei Theory Research Lab,Department of Mathematics, School of Science
[2] Hangzhou Dianzi University,Department of Applied Mathematics
[3] The Hong Kong Polytechnic University,School of Mathematics
[4] Tianjin University,undefined
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关键词
Biquadratic tensor; nuclear norm; tensor product; biquadratic rank-one decomposition; biquadratic Tucker decomposition; 15A69;
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摘要
Biquadratic tensors play a central role in many areas of science. Examples include elastic tensor and Eshelby tensor in solid mechanics, and Riemannian curvature tensor in relativity theory. The singular values and spectral norm of a general third order tensor are the square roots of the M-eigenvalues and spectral norm of a biquadratic tensor, respectively. The tensor product operation is closed for biquadratic tensors. All of these motivate us to study biquadratic tensors, biquadratic decomposition, and norms of biquadratic tensors. We show that the spectral norm and nuclear norm for a biquadratic tensor may be computed by using its biquadratic structure. Then, either the number of variables is reduced, or the feasible region can be reduced. We show constructively that for a biquadratic tensor, a biquadratic rank-one decomposition always exists, and show that the biquadratic rank of a biquadratic tensor is preserved under an independent biquadratic Tucker decomposition. We present a lower bound and an upper bound of the nuclear norm of a biquadratic tensor. Finally, we define invertible biquadratic tensors, and present a lower bound for the product of the nuclear norms of an invertible biquadratic tensor and its inverse, and a lower bound for the product of the nuclear norm of an invertible biquadratic tensor, and the spectral norm of its inverse.
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页码:171 / 185
页数:14
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