Literature DB >> 26052363

Reduced multiple empirical kernel learning machine.

Zhe Wang1, MingZhe Lu1, Daqi Gao1.   

Abstract

Multiple kernel learning (MKL) is demonstrated to be flexible and effective in depicting heterogeneous data sources since MKL can introduce multiple kernels rather than a single fixed kernel into applications. However, MKL would get a high time and space complexity in contrast to single kernel learning, which is not expected in real-world applications. Meanwhile, it is known that the kernel mapping ways of MKL generally have two forms including implicit kernel mapping and empirical kernel mapping (EKM), where the latter is less attracted. In this paper, we focus on the MKL with the EKM, and propose a reduced multiple empirical kernel learning machine named RMEKLM for short. To the best of our knowledge, it is the first to reduce both time and space complexity of the MKL with EKM. Different from the existing MKL, the proposed RMEKLM adopts the Gauss Elimination technique to extract a set of feature vectors, which is validated that doing so does not lose much information of the original feature space. Then RMEKLM adopts the extracted feature vectors to span a reduced orthonormal subspace of the feature space, which is visualized in terms of the geometry structure. It can be demonstrated that the spanned subspace is isomorphic to the original feature space, which means that the dot product of two vectors in the original feature space is equal to that of the two corresponding vectors in the generated orthonormal subspace. More importantly, the proposed RMEKLM brings a simpler computation and meanwhile needs a less storage space, especially in the processing of testing. Finally, the experimental results show that RMEKLM owns a much efficient and effective performance in terms of both complexity and classification. The contributions of this paper can be given as follows: (1) by mapping the input space into an orthonormal subspace, the geometry of the generated subspace is visualized; (2) this paper first reduces both the time and space complexity of the EKM-based MKL; (3) this paper adopts the Gauss Elimination, one of the on-the-shelf techniques, to generate a basis of the original feature space, which is stable and efficient.

Keywords:  Empirical kernel mapping; Multiple kernel learning; Orthonormal basis; Pattern recognition; Reduced kernel learning

Year:  2014        PMID: 26052363      PMCID: PMC4454124          DOI: 10.1007/s11571-014-9304-2

Source DB:  PubMed          Journal:  Cogn Neurodyn        ISSN: 1871-4080            Impact factor:   5.082


  9 in total

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Journal:  IEEE Trans Neural Netw       Date:  2005-03

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Authors:  Zhe Wang; Songcan Chen; Tingkai Sun
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2008-02       Impact factor: 6.226

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Journal:  IEEE Trans Neural Netw       Date:  2001

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Authors:  Niranjan Subrahmanya; Yung C Shin
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2010-05       Impact factor: 6.226

7.  Feature extraction and recognition of epileptiform activity in EEG by combining PCA with ApEn.

Authors:  Chunmei Wang; Junzhong Zou; Jian Zhang; Min Wang; Rubin Wang
Journal:  Cogn Neurodyn       Date:  2010-06-26       Impact factor: 5.082

8.  Bottom-up attention: pulsed PCA transform and pulsed cosine transform.

Authors:  Ying Yu; Bin Wang; Liming Zhang
Journal:  Cogn Neurodyn       Date:  2011-05-18       Impact factor: 5.082

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Authors:  Jian-Hua Zhang; Pan-Pan Qin; Jörg Raisch; Ru-Bin Wang
Journal:  Cogn Neurodyn       Date:  2013-01-20       Impact factor: 5.082

  9 in total

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