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Bounded Simplex-Structured Matrix Factorization: Algorithms, Identifiability and Applications

26 September 2022
Olivier Vu Thanh
Nicolas Gillis
Fabian Lecron
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Abstract

In this paper, we propose a new low-rank matrix factorization model dubbed bounded simplex-structured matrix factorization (BSSMF). Given an input matrix XXX and a factorization rank rrr, BSSMF looks for a matrix WWW with rrr columns and a matrix HHH with rrr rows such that X≈WHX \approx WHX≈WH where the entries in each column of WWW are bounded, that is, they belong to given intervals, and the columns of HHH belong to the probability simplex, that is, HHH is column stochastic. BSSMF generalizes nonnegative matrix factorization (NMF), and simplex-structured matrix factorization (SSMF). BSSMF is particularly well suited when the entries of the input matrix XXX belong to a given interval; for example when the rows of XXX represent images, or XXX is a rating matrix such as in the Netflix and MovieLens datasets where the entries of XXX belong to the interval [1,5][1,5][1,5]. The simplex-structured matrix HHH not only leads to an easily understandable decomposition providing a soft clustering of the columns of XXX, but implies that the entries of each column of WHWHWH belong to the same intervals as the columns of WWW. In this paper, we first propose a fast algorithm for BSSMF, even in the presence of missing data in XXX. Then we provide identifiability conditions for BSSMF, that is, we provide conditions under which BSSMF admits a unique decomposition, up to trivial ambiguities. Finally, we illustrate the effectiveness of BSSMF on two applications: extraction of features in a set of images, and the matrix completion problem for recommender systems.

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