• Title of article

    Semiparametric Preference Learning

  • Author/Authors

    Zhen, Yi Georgia Institute - College of Computing of Technology, USA , Song, Yangqiu University of Illinois at Urbana-Champaign - Department of Computer Science, USA , Yeung, Dit-Yan Hong Kong University of Science and Technology - Department of Computer Science and Engineering, China

  • From page
    257
  • To page
    264
  • Abstract
    Unlike traditional supervised learning problems, preference learning learns from data available in the form of pairwise preference relations between instances. Existing preference learning methods are either parametric or nonparametric in nature. We propose in this paper a semiparametric preference learning model, abbreviated as SPPL, with the aim of combining the strengths of the parametric and nonparametric approaches. SPPL uses multiple Gaussian processes which are linearly coupled to determine the preference relations between instances. SPPL is more powerful than previous models while keeping the computational complexity low (linear in the number of distinct instances). We devise an efficient algorithm for model learning. Empirical studies have been conducted on two real-world data sets showing that SPPL outperforms related preference learning methods.
  • Keywords
    semiparametric learning , preference learning , Gaussian process
  • Journal title
    Tsinghua Science and Technology
  • Journal title
    Tsinghua Science and Technology
  • Record number

    2535612