Multiple Kernel Dimensionality Reduction via Ratio-Trace and Marginal Fisher Analysis
Hui Xu,
Yongguo Yang,
Xin Wang,
Mingming Liu,
Hongxia Xie and
Chujiao Wang
Mathematical Problems in Engineering, 2019, vol. 2019, 1-8
Abstract:
Traditional supervised multiple kernel learning (MKL) for dimensionality reduction is generally an extension of kernel discriminant analysis (KDA), which has some restrictive assumptions. In addition, they generally are based on graph embedding framework. A more general multiple kernel-based dimensionality reduction algorithm, called multiple kernel marginal Fisher analysis (MKL-MFA), is presented for supervised nonlinear dimensionality reduction combined with ratio-race optimization problem. MKL-MFA aims at relaxing the restrictive assumption that the data of each class is of a Gaussian distribution and finding an appropriate convex combination of several base kernels. To improve the efficiency of multiple kernel dimensionality reduction, the spectral regression frameworks are incorporated into the optimization model. Furthermore, the optimal weights of predefined base kernels can be obtained by solving a different convex optimization. Experimental results on benchmark datasets demonstrate that MKL-MFA outperforms the state-of-the-art supervised multiple kernel dimensionality reduction methods.
Date: 2019
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Persistent link: https://EconPapers.repec.org/RePEc:hin:jnlmpe:6941475
DOI: 10.1155/2019/6941475
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