JSAI2019

Presentation information

General Session

General Session » [GS] J-1 Fundamental AI, theory

[4A3-J-1] Fundamental AI, theory: bio-inspired models of intelligence

Fri. Jun 7, 2019 2:00 PM - 3:40 PM Room A (2F Main hall A)

Chair:Takuma Otsuka Reviewer:Junpei Komihyama

3:20 PM - 3:40 PM

[4A3-J-1-05] An extension method of semi-supervised boosting to multiclass classification

〇Yuta Sakai1, Kazuki Yasui1, Kenta Mikawa2, Masayuki Goto1 (1. Waseda University, 2. Shonan Institute of Technology)

Keywords:semi-supervised learning, boosting, multi-class classification, ensemble learning

Recent years, semi-supervised learning which classifies test data into correct category using not only training (labeled) data but a large number of unlabeled data has paid attention. However, in the semi-supervised learning setting, there is a problem that classification accuracy deteriorates because distribution of labeled data is biased. The SemiBoost is one of semi-supervised learning method to solve the problem. The SemiBoost is a binary classification method. However, this method can not be extended directly to multi-class classification. In this research, we propose the way to extend the SemiBoost for multi-class classification using the concept of Error Correcting Output Code (ECOC) method. To verify the effectiveness of our proposed method, we conduct simulation experiment using UCI machine learning repository.