DocumentCode
2370041
Title
CBC: clustering based text classification requiring minimal labeled data
Author
Zeng, Hua-Jun ; Wang, Xuan-Hui ; Chen, Zheng ; Lu, Hongjun ; Ma, Wei-Ying
Author_Institution
Microsoft Res. Asia, Beijing, China
fYear
2003
fDate
19-22 Nov. 2003
Firstpage
443
Lastpage
450
Abstract
Semisupervised learning methods construct classifiers using both labeled and unlabeled training data samples. While unlabeled data samples can help to improve the accuracy of trained models to certain extent, existing methods still face difficulties when labeled data is not sufficient and biased against the underlying data distribution. We present a clustering based classification (CBC) approach. Using this approach, training data, including both the labeled and unlabeled data, is first clustered with the guidance of the labeled data. Some of unlabeled data samples are then labeled based on the clusters obtained. Discriminative classifiers can subsequently be trained with the expanded labeled dataset. The effectiveness of the proposed method is justified analytically. Our experimental results demonstrated that CBC outperforms existing algorithms when the size of labeled dataset is very small.
Keywords
learning (artificial intelligence); maximum likelihood estimation; pattern classification; pattern clustering; support vector machines; clustering based text classification; discriminative classifiers; maximum likelihood estimation; minimal labeled data; semisupervised learning; transductive support vector machines; Asia; Classification algorithms; Clustering algorithms; Computer science; Semisupervised learning; Supervised learning; Support vector machine classification; Support vector machines; Text categorization; Training data;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Mining, 2003. ICDM 2003. Third IEEE International Conference on
Print_ISBN
0-7695-1978-4
Type
conf
DOI
10.1109/ICDM.2003.1250951
Filename
1250951
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