Learning representative exemplars using one-class Gaussian process regression

Youngdoo Son, Sujee Lee, Saerom Park, Jaewook Lee

Research output: Contribution to journalArticlepeer-review

8 Scopus citations

Abstract

An exemplar is an observation that represents a group of similar observations. Exemplars from data are examined to divide entire heterogeneous data into several homogeneous subgroups, wherein each subgroup is represented by an exemplar. With its inherent sparsity, an exemplar-based learning model provides a parsimonious model to represent or cluster large-scale data. A novel exemplar learning method using one-class Gaussian process (GP) regression is proposed in this study. The proposed method constructs data distribution support from one-class GP regression using automatic relevance determination prior and heterogeneous GP noise. Exemplars that correspond to the basis vectors of the constructed support function are then automatically located during the training process. The proposed method is applied to various data sets to examine its operability, characteristics of data representation, and cluster analysis. The exemplars of some real data generated by the proposed method are also reported.

Original languageEnglish
Pages (from-to)185-197
Number of pages13
JournalPattern Recognition
Volume74
DOIs
StatePublished - Feb 2018

Keywords

  • Automatic relevance determination
  • Kernel methods
  • One class Gaussian process regression
  • Representative exemplars
  • Support-based clustering

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