High order discriminant analysis based on Riemannian optimization

作者:

Highlights:

摘要

Supervised learning of linear discriminant analysis is a well-known algorithm in machine learning, but most of the discriminant relevant algorithms are generally fail to discover the nonlinear structures in dimensionality reduction. To address such problem, thus we propose a novel method for dimensionality reduction of high-dimensional dataset, named manifold-based high order discriminant analysis (MHODA). Transforming the optimization problem from the constrained Euclidean space to a restricted search space of Riemannian manifold and employing the underlying geometry of nonlinear structures, it takes advantage of the fact that matrix manifold is actually of low dimension embedded into the ambient space. More concretely, we update the projection matrices for optimizing over the Stiefel manifold, and exploit the second order geometry of trust-region method. Moreover, in order to validate the efficiency and accuracy of the proposed algorithm, we conduct clustering and classification experiments by using six benchmark datasets. The numerical results demonstrate that MHODA is superiority to the most state-of-the-art methods.

论文关键词:Classification,Clustering,Dimensionality reduction,Discriminant analysis,Product manifold,Riemannian optimization,Stiefel manifold

论文评审过程:Received 26 January 2019, Revised 3 January 2020, Accepted 6 February 2020, Available online 11 February 2020, Version of Record 4 April 2020.

论文官网地址:https://doi.org/10.1016/j.knosys.2020.105630