Joint Tensor Factorization and Outlying Slab Suppression with Applications

Fu, Xiao, Huang, Kejun, Ma, Wing-Kin, Sidiropoulos, Nicholas D., Bro, Rasmus

arXiv.org Machine Learning 

We consider factoring low-rank tensors in the presence of outlying slabs. This problem is important in practice, because data collected in many real-world applications, such as speech, fluorescence, and some social network data, fit this paradigm. Prior work tackles this problem by iteratively selecting a fixed number of slabs and fitting, a procedure which may not converge. We formulate this problem from a group-sparsity promoting point of view, and propose an alternating optimization framework to handle the corresponding $\ell_p$ ($0

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