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On the Accuracy of Hotelling-Type Asymmetric Tensor Deflation: A Random Tensor Analysis

Authors :
Seddik, Mohamed El Amine
Guillaud, Maxime
Decurninge, Alexis
Goulart, José Henrique de Morais
Publication Year :
2023

Abstract

This work introduces an asymptotic study of Hotelling-type tensor deflation in the presence of noise, in the regime of large tensor dimensions. Specifically, we consider a low-rank asymmetric tensor model of the form $\sum_{i=1}^r \beta_i{\mathcal{A}}_i + {\mathcal{W}}$ where $\beta_i\geq 0$ and the ${\mathcal{A}}_i$'s are unit-norm rank-one tensors such that $\left| \langle {\mathcal{A}}_i, {\mathcal{A}}_j \rangle \right| \in [0, 1]$ for $i\neq j$ and ${\mathcal{W}}$ is an additive noise term. Assuming that the dominant components are successively estimated from the noisy observation and subsequently subtracted, we leverage recent advances in random tensor theory in the regime of asymptotically large tensor dimensions to analytically characterize the estimated singular values and the alignment of estimated and true singular vectors at each step of the deflation procedure. Furthermore, this result can be used to construct estimators of the signal-to-noise ratios $\beta_i$ and the alignments between the estimated and true rank-1 signal components.<br />Comment: Accepted at IEEE CAMSAP 2023. See also companion paper arXiv:2304.10248 for the symmetric case. arXiv admin note: text overlap with arXiv:2211.09004

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.18717
Document Type :
Working Paper