Canonical polyadic decomposition of third-order tensors: Relaxed uniqueness conditions and algebraic algorithm

Canonical Polyadic Decomposition (CPD) of a third-order tensor is a minimal decomposition into a sum of rank-1 tensors. We find new mild deterministic conditions for the uniqueness of individual rank-1 tensors in CPD and present an algorithm to recover them. We call the algorithm “algebraic” because...

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Published inLinear algebra and its applications Vol. 513; pp. 342 - 375
Main Authors Domanov, Ignat, De Lathauwer, Lieven
Format Journal Article
LanguageEnglish
Published Amsterdam Elsevier Inc 15.01.2017
American Elsevier Company, Inc
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ISSN0024-3795
1873-1856
1873-1856
DOI10.1016/j.laa.2016.10.019

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Summary:Canonical Polyadic Decomposition (CPD) of a third-order tensor is a minimal decomposition into a sum of rank-1 tensors. We find new mild deterministic conditions for the uniqueness of individual rank-1 tensors in CPD and present an algorithm to recover them. We call the algorithm “algebraic” because it relies only on standard linear algebra. It does not involve more advanced procedures than the computation of the null space of a matrix and eigen/singular value decomposition. Simulations indicate that the new conditions for uniqueness and the working assumptions for the algorithm hold for a randomly generated I×J×K tensor of rank R≥K≥J≥I≥2 if R is bounded as R≤(I+J+K−2)/2+(K−(I−J)2+4K)/2 at least for the dimensions that we have tested. This improves upon the famous Kruskal bound for uniqueness R≤(I+J+K−2)/2 as soon as I≥3. In the particular case R=K, the new bound above is equivalent to the bound R≤(I−1)(J−1) which is known to be necessary and sufficient for the generic uniqueness of the CPD. An existing algebraic algorithm (based on simultaneous diagonalization of a set of matrices) computes the CPD under the more restrictive constraint R(R−1)≤I(I−1)J(J−1)/2 (implying that R<(J−12)(I−12)/2+1). We give an example of a low-dimensional but high-rank CPD that cannot be found by optimization-based algorithms in a reasonable amount of time while our approach takes less than a second. We demonstrate that, at least for R≤24, our algorithm can recover the rank-1 tensors in the CPD up to R≤(I−1)(J−1).
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ISSN:0024-3795
1873-1856
1873-1856
DOI:10.1016/j.laa.2016.10.019