Efficient Constrained Tensor Factorization by Alternating Optimization with Primal-Dual Splitting
Abstract
Tensor factorization with hard and/or soft constraints has played an important role in signal processing and data analysis. However, existing algorithms for constrained tensor factorization have two drawbacks: (i) they require matrix-inversion; and (ii) they cannot (or at least is very difficult to) handle structured regularizations. We propose a new tensor factorization algorithm that circumvents these drawbacks. The proposed method is built upon alternating optimization, and each subproblem is solved by a primal-dual splitting algorithm, yielding an efficient and flexible algorithmic framework to constrained tensor factorization. The advantages of the proposed method over a state-of-the-art constrained tensor factorization algorithm, called AO-ADMM, are demonstrated on regularized nonnegative tensor factorization.
Keywords
Cite
@article{arxiv.1711.00603,
title = {Efficient Constrained Tensor Factorization by Alternating Optimization with Primal-Dual Splitting},
author = {Shunsuke Ono and Takuma Kasai},
journal= {arXiv preprint arXiv:1711.00603},
year = {2024}
}
Comments
5 pages, submitted to ICASSP2018