Title
Tensor principal component analysis via convex optimization.
Abstract
This paper is concerned with the computation of the principal components for a general tensor, known as the tensor principal component analysis (PCA) problem. We show that the general tensor PCA problem is reducible to its special case where the tensor in question is super-symmetric with an even degree. In that case, the tensor can be embedded into a symmetric matrix. We prove that if the tensor is rank-one, then the embedded matrix must be rank-one too, and vice versa. The tensor PCA problem can thus be solved by means of matrix optimization under a rank-one constraint, for which we propose two solution methods: (1) imposing a nuclear norm penalty in the objective to enforce a low-rank solution; (2) relaxing the rank-one constraint by semidefinite programming. Interestingly, our experiments show that both methods can yield a rank-one solution for almost all the randomly generated instances, in which case solving the original tensor PCA problem to optimality. To further cope with the size of the resulting convex optimization models, we propose to use the alternating direction method of multipliers, which reduces significantly the computational efforts. Various extensions of the model are considered as well.
Year
DOI
Venue
2015
10.1007/s10107-014-0774-0
Math. Program.
Keywords
Field
DocType
Tensor, Principal component analysis, Low rank, Nuclear norm, Semidefinite programming relaxation, 15A69, 15A03, 62H25, 90C22, 15A18
Tensor density,Mathematical optimization,Tensor (intrinsic definition),Tensor,Cartesian tensor,Tensor field,Symmetric tensor,Tensor product of Hilbert spaces,Tensor contraction,Mathematics
Journal
Volume
Issue
ISSN
150
2
1436-4646
Citations 
PageRank 
References 
16
0.81
36
Authors
3
Name
Order
Citations
PageRank
Bo Jiang1625.55
Shiqian Ma2106863.48
Shuzhong Zhang32808181.66