Low-Rank Riemannian Optimization for Graph-Based Clustering Applications
- Creators
- Douik, Ahmed
- Hassibi, Babak
Abstract
With the abundance of data, machine learning applications engaged increased attention in the last decade. An attractive approach to robustify the statistical analysis is to preprocess the data through clustering. This paper develops a low-complexity Riemannian optimization framework for solving optimization problems on the set of positive semidefinite stochastic matrices. The low-complexity feature of the proposed algorithms stems from the factorization of the optimization variable X = YY^T and deriving conditions on the number of columns of Y under which the factorization yields a satisfactory solution. The paper further investigates the embedded and quotient geometries of the resulting Riemannian manifolds. In particular, the paper explicitly derives the tangent space, Riemannian gradients and Hessians, and a retraction operator allowing the design of efficient first and second-order optimization methods for the graph-based clustering applications of interest. The numerical results reveal that the resulting algorithms present a clear complexity advantage as compared with state-of-the-art Euclidean and Riemannian approaches for graph clustering applications.
Additional Information
© 2021 IEEE. A part of this paper [1] appears in proc. of International Conference on Machine Learning (ICML' 2018), Stockholm, Sweden. The authors would like to express their gratitude to the reviewers for their careful reading, their insightful, and valuable comments which helped to highly improve the quality of the manuscript.Attached Files
Accepted Version - 09409736.pdf
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Additional details
- Eprint ID
- 108941
- Resolver ID
- CaltechAUTHORS:20210503-115705141
- Created
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2021-05-04Created from EPrint's datestamp field
- Updated
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2022-08-25Created from EPrint's last_modified field