A Semi-supervised Canonical Correlation Analysis Algorithm Based on Deep Boltzmann Machine

Journal Title: 河南科技大学学报(自然科学版) - Year 2016, Vol 37, Issue 2

Abstract

To solve the problem that the canonical correlation analysis( CCA) algorithm was not adapted to the high level of correlation,through pattern classification,an improved algorithm was proposed based on semisupervised canonical correlation analysis with deep Boltzmann machine( DBM). Firstly,the implicit feature and the explicit feature were extracted by using the deep Boltzmann machine. By using the annotated pairwise constraints of the sample information,the most effective identification trait was constructed. The simulation experiments were conducted via ORL,Yale and AR face databases. The results show that the proposed algorithms are better than other methods.

Authors and Affiliations

Wen JIANG, Lin QI

Keywords

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  • EP ID EP461021
  • DOI 10.15926/j.cnki.issn1672-6871.2016.02.010
  • Views 90
  • Downloads 0

How To Cite

Wen JIANG, Lin QI (2016). A Semi-supervised Canonical Correlation Analysis Algorithm Based on Deep Boltzmann Machine. 河南科技大学学报(自然科学版), 37(2), 47-51. https://europub.co.uk./articles/-A-461021