• Title of article

    Dimensionality reduction by Mixed Kernel Canonical Correlation Analysis

  • Author/Authors

    Zhu، نويسنده , , Xiaofeng and Huang، نويسنده , , Zi and Tao Shen، نويسنده , , Heng and Cheng، نويسنده , , Jian and Xu، نويسنده , , Changsheng، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2012
  • Pages
    14
  • From page
    3003
  • To page
    3016
  • Abstract
    In this paper, we propose a novel method named Mixed Kernel CCA (MKCCA) to achieve easy yet accurate implementation of dimensionality reduction. MKCCA consists of two major steps. First, the high dimensional data space is mapped into the reproducing kernel Hilbert space (RKHS) rather than the Hilbert space, with a mixture of kernels, i.e. a linear combination between a local kernel and a global kernel. Meanwhile, a uniform design for experiments with mixtures is also introduced for model selection. Second, in the new RKHS, Kernel CCA is further improved by performing Principal Component Analysis (PCA) followed by CCA for effective dimensionality reduction. We prove that MKCCA can actually be decomposed into two separate components, i.e. PCA and CCA, which can be used to better remove noises and tackle the issue of trivial learning existing in CCA or traditional Kernel CCA. After this, the proposed MKCCA can be implemented in multiple types of learning, such as multi-view learning, supervised learning, semi-supervised learning, and transfer learning, with the reduced data. We show its superiority over existing methods in different types of learning by extensive experimental results.
  • Keywords
    Mixed kernel , Canonical Correlation Analysis , Model selection , Dimensionality reduction
  • Journal title
    PATTERN RECOGNITION
  • Serial Year
    2012
  • Journal title
    PATTERN RECOGNITION
  • Record number

    1734674