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    IEEE Trans Pattern Anal Mach Intell. 2011 Jun;33(6):1147-60.

    Multiple kernel learning for dimensionality reduction.

    Source

    Institute of Information Science, Academia Sinica, Nankang, Taipei 115, Taiwan. yylin@iis.sinica.edu.tw

    Abstract

    In solving complex visual learning tasks, adopting multiple descriptors to more precisely characterize the data has been a feasible way for improving performance. The resulting data representations are typically high-dimensional and assume diverse forms. Hence, finding a way of transforming them into a unified space of lower dimension generally facilitates the underlying tasks such as object recognition or clustering. To this end, the proposed approach (termed MKL-DR) generalizes the framework of multiple kernel learning for dimensionality reduction, and distinguishes itself with the following three main contributions: first, our method provides the convenience of using diverse image descriptors to describe useful characteristics of various aspects about the underlying data. Second, it extends a broad set of existing dimensionality reduction techniques to consider multiple kernel learning, and consequently improves their effectiveness. Third, by focusing on the techniques pertaining to dimensionality reduction, the formulation introduces a new class of applications with the multiple kernel learning framework to address not only the supervised learning problems but also the unsupervised and semi-supervised ones.

    PMID:
    20921580
    [PubMed - indexed for MEDLINE]

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