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A Multiple Kernel Learning Model Based on p-Norm.

Jinshan Qi1,2, Xun Liang1, Rui Xu1

  • 1School of Information, Renmin University of China, Beijing 100872, China.

Computational Intelligence and Neuroscience
|April 3, 2018
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Summary
This summary is machine-generated.

This study introduces a generalized multiple kernel learning (MKL) method using p-norms, improving classification accuracy over existing L1/L2-norm methods. The new L1/L-norm MKL offers better performance while retaining beneficial properties.

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Area of Science:

  • Machine Learning
  • Computational Science
  • Pattern Recognition

Background:

  • Support Vector Machines (SVMs) effectively address linearly inseparable data using kernel functions.
  • Multiple Kernel Learning (MKL) enhances SVM classification accuracy by combining kernels.
  • Existing MKL methods often use L1-norm (sparse solutions) or L-norm (non-sparse, noise-sensitive) constraints on kernel weights.

Purpose of the Study:

  • To propose a generalized Multiple Kernel Learning (MKL) method based on the p-norm.
  • To extend the L1/L2-norm based Generalized Multiple Kernel Learning (GMKL) by incorporating L1- and L-norms.
  • To evaluate the proposed L1/L-norm MKL method's classification accuracy compared to existing GMKL.

Main Methods:

  • Developed a novel generalized MKL framework utilizing p-norm constraints on kernel combination weights.
  • Formulated the method by joining L1- and L-norms, encompassing the L1/L2-norm GMKL as a special case (p=2).
  • Conducted experiments to compare the classification performance of the proposed L1/L-norm MKL against the L1/L2-norm GMKL.

Main Results:

  • The proposed L1/L-norm MKL method achieved higher classification accuracy than the L1/L2-norm GMKL.
  • The method successfully integrated properties from both L1-norm (sparsity) and L-norm (information retention) constraints.
  • Experimental results validated the superior performance of the generalized p-norm MKL approach.

Conclusions:

  • The generalized L1/L-norm MKL offers a more effective approach for improving SVM classification accuracy.
  • This framework provides a flexible way to balance sparsity and information preservation in kernel combinations.
  • The proposed method represents a significant advancement in Multiple Kernel Learning techniques.