Non-Negative Matrix Factorization via Low-Rank Stochastic Manifold Optimization
- Creators
- Douik, Ahmed
- Hassibi, Babak
Abstract
Several real-world applications, notably in non-negative matrix factorization, graph-based clustering, and machine learning, require solving a convex optimization problem over the set of stochastic and doubly stochastic matrices. A common feature of these problems is that the optimal solution is generally a low-rank matrix. This paper suggests reformulating the problem by taking advantage of the low-rank factorization X = UV^T and develops a Riemannian optimization framework for solving optimization problems on the set of low-rank stochastic and doubly stochastic matrices. In particular, this paper introduces and studies the geometry of the low-rank stochastic multinomial and the doubly stochastic manifold in order to derive first-order optimization algorithms. Being carefully designed and of lower dimension than the original problem, the proposed Riemannian optimization framework presents a clear complexity advantage. The claim is attested through numerical experiments on real-world and synthetic data for Non-negative Matrix Factorization (NFM) applications. The proposed algorithm is shown to outperform, in terms of running time, state-of-the-art methods for NFM.
Additional Information
© 2020 IEEE.Additional details
- Eprint ID
- 112853
- DOI
- 10.1109/ita50056.2020.9244937
- Resolver ID
- CaltechAUTHORS:20220112-76592900
- Created
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2022-01-12Created from EPrint's datestamp field
- Updated
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2022-07-25Created from EPrint's last_modified field