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Multiple kernel learning using single stage function approximation for binary classification problems

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  • Shiju S. S.
  • Sumitra S.

Abstract

In this paper, the multiple kernel learning (MKL) is formulated as a supervised classification problem. We dealt with binary classification data and hence the data modelling problem involves the computation of two decision boundaries of which one related with that of kernel learning and the other with that of input data. In our approach, they are found with the aid of a single cost function by constructing a global reproducing kernel Hilbert space (RKHS) as the direct sum of the RKHSs corresponding to the decision boundaries of kernel learning and input data and searching that function from the global RKHS, which can be represented as the direct sum of the decision boundaries under consideration. In our experimental analysis, the proposed model had shown superior performance in comparison with that of existing two stage function approximation formulation of MKL, where the decision functions of kernel learning and input data are found separately using two different cost functions. This is due to the fact that single stage representation helps the knowledge transfer between the computation procedures for finding the decision boundaries of kernel learning and input data, which inturn boosts the generalisation capacity of the model.

Suggested Citation

  • Shiju S. S. & Sumitra S., 2017. "Multiple kernel learning using single stage function approximation for binary classification problems," International Journal of Systems Science, Taylor & Francis Journals, vol. 48(16), pages 3569-3580, December.
  • Handle: RePEc:taf:tsysxx:v:48:y:2017:i:16:p:3569-3580
    DOI: 10.1080/00207721.2017.1381892
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