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arxiv: 1801.03773 · v1 · pith:HH5EHEDHnew · submitted 2018-01-09 · 📡 eess.SP · cs.MM· cs.SD· eess.AS· stat.ML

Polar n-Complex and n-Bicomplex Singular Value Decomposition and Principal Component Pursuit

classification 📡 eess.SP cs.MMcs.SDeess.ASstat.ML
keywords componentprincipalbicomplexcomplexdecompositionpolarpursuitsingular
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Informed by recent work on tensor singular value decomposition and circulant algebra matrices, this paper presents a new theoretical bridge that unifies the hypercomplex and tensor-based approaches to singular value decomposition and robust principal component analysis. We begin our work by extending the principal component pursuit to Olariu's polar $n$-complex numbers as well as their bicomplex counterparts. In so doing, we have derived the polar $n$-complex and $n$-bicomplex proximity operators for both the $\ell_1$- and trace-norm regularizers, which can be used by proximal optimization methods such as the alternating direction method of multipliers. Experimental results on two sets of audio data show that our algebraically-informed formulation outperforms tensor robust principal component analysis. We conclude with the message that an informed definition of the trace norm can bridge the gap between the hypercomplex and tensor-based approaches. Our approach can be seen as a general methodology for generating other principal component pursuit algorithms with proper algebraic structures.

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