5 research outputs found
Exponentially Convergent Algorithms for Supervised Matrix Factorization
Supervised matrix factorization (SMF) is a classical machine learning method
that simultaneously seeks feature extraction and classification tasks, which
are not necessarily a priori aligned objectives. Our goal is to use SMF to
learn low-rank latent factors that offer interpretable, data-reconstructive,
and class-discriminative features, addressing challenges posed by
high-dimensional data. Training SMF model involves solving a nonconvex and
possibly constrained optimization with at least three blocks of parameters.
Known algorithms are either heuristic or provide weak convergence guarantees
for special cases. In this paper, we provide a novel framework that 'lifts' SMF
as a low-rank matrix estimation problem in a combined factor space and propose
an efficient algorithm that provably converges exponentially fast to a global
minimizer of the objective with arbitrary initialization under mild
assumptions. Our framework applies to a wide range of SMF-type problems for
multi-class classification with auxiliary features. To showcase an application,
we demonstrate that our algorithm successfully identified well-known
cancer-associated gene groups for various cancers.Comment: 33 pages, 3 figures. arXiv admin note: substantial text overlap with
arXiv:2206.0677