Semisupervised Learning with Parameter-Free Similarity of Label and Side Information

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16 Scopus citations

Abstract

As for semisupervised learning, both label information and side information serve as pivotal indicators for the classification. Nonetheless, most of related research works utilize either label information or side information instead of exploiting both of them simultaneously. To address the referred defect, we propose a graph-based semisupervised learning (GSL) problem according to both given label information and side information. To solve the GSL problem efficiently, two novel self-weighted strategies are proposed based on solving associated equivalent counterparts of a GSL problem, which can be widely applied to a spectrum of biobjective optimizations. Different from a conventional technique to amalgamate must-link and cannot-link into a single similarity for convenient optimization, we derive a new parameter-free similarity, upon which intrinsic graph and penalty graph can be separately developed. Consequently, a novel semisupervised classification algorithm can be summarized correspondingly with a theoretical analysis.

Original languageEnglish
Article number8399869
Pages (from-to)405-414
Number of pages10
JournalIEEE Transactions on Neural Networks and Learning Systems
Volume30
Issue number2
DOIs
StatePublished - Feb 2019

Keywords

  • Graph-based semisupervised learning (GSL)
  • quadratic trace ratio (QTR) problem
  • side information
  • soft label

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