4.6 Article

Sparse nonnegative tensor decomposition using proximal algorithm and inexact block coordinate descent scheme

Journal

NEURAL COMPUTING & APPLICATIONS
Volume 33, Issue 24, Pages 17369-17387

Publisher

SPRINGER LONDON LTD
DOI: 10.1007/s00521-021-06325-8

Keywords

Tensor decomposition; Nonnegative CANDECOMP; PARAFAC decomposition; Sparse regularization; Proximal algorithm; Inexact block coordinate descent

Funding

  1. University of Jyvaskyla (JYU)

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The paper investigated the nonnegative CANDECOMP/PARAFAC decomposition with sparse regularization using l(1)-norm, which may lead to numerical instability when higher sparsity is imposed.
Nonnegative tensor decomposition is a versatile tool for multiway data analysis, by which the extracted components are nonnegative and usually sparse. Nevertheless, the sparsity is only a side effect and cannot be explicitly controlled without additional regularization. In this paper, we investigated the nonnegative CANDECOMP/PARAFAC (NCP) decomposition with the sparse regularization item using l(1)-norm (sparse NCP). When high sparsity is imposed, the factor matrices will contain more zero components and will not be of full column rank. Thus, the sparse NCP is prone to rank deficiency, and the algorithms of sparse NCP may not converge. In this paper, we proposed a novel model of sparse NCP with the proximal algorithm. The subproblems in the new model are strongly convex in the block coordinate descent (BCD) framework. Therefore, the new sparse NCP provides a full column rank condition and guarantees to converge to a stationary point. In addition, we proposed an inexact BCD scheme for sparse NCP, where each subproblem is updated multiple times to speed up the computation. In order to prove the effectiveness and efficiency of the sparse NCP with the proximal algorithm, we employed two optimization algorithms to solve the model, including inexact alternating nonnegative quadratic programming and inexact hierarchical alternating least squares. We evaluated the proposed sparse NCP methods by experiments on synthetic, real-world, small-scale, and large-scale tensor data. The experimental results demonstrate that our proposed algorithms can efficiently impose sparsity on factor matrices, extract meaningful sparse components, and outperform state-of-the-art methods.

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