Cohen, Jeremy E. (2022) Dictionary-Based Low-Rank Approximations and the Mixed Sparse Coding Problem. Frontiers in Applied Mathematics and Statistics, 8. ISSN 2297-4687
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Abstract
Constrained tensor and matrix factorization models allow to extract interpretable patterns from multiway data. Therefore crafting efficient algorithms for constrained low-rank approximations is nowadays an important research topic. This work deals with columns of factor matrices of a low-rank approximation being sparse in a known and possibly overcomplete basis, a model coined as Dictionary-based Low-Rank Approximation (DLRA). While earlier contributions focused on finding factor columns inside a dictionary of candidate columns, i.e., one-sparse approximations, this work is the first to tackle DLRA with sparsity larger than one. I propose to focus on the sparse-coding subproblem coined Mixed Sparse-Coding (MSC) that emerges when solving DLRA with an alternating optimization strategy. Several algorithms based on sparse-coding heuristics (greedy methods, convex relaxations) are provided to solve MSC. The performance of these heuristics is evaluated on simulated data. Then, I show how to adapt an efficient MSC solver based on the LASSO to compute Dictionary-based Matrix Factorization and Canonical Polyadic Decomposition in the context of hyperspectral image processing and chemometrics. These experiments suggest that DLRA extends the modeling capabilities of low-rank approximations, helps reducing estimation variance and enhances the identifiability and interpretability of estimated factors.
Item Type: | Article |
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Subjects: | Eurolib Press > Mathematical Science |
Depositing User: | Managing Editor |
Date Deposited: | 20 Jan 2023 06:24 |
Last Modified: | 13 Oct 2023 03:58 |
URI: | http://info.submit4journal.com/id/eprint/927 |