4.5 Article

A novel semi-supervised learning framework with simultaneous text representing

期刊

KNOWLEDGE AND INFORMATION SYSTEMS
卷 34, 期 3, 页码 547-562

出版社

SPRINGER LONDON LTD
DOI: 10.1007/s10115-012-0481-1

关键词

Semi-supervised learning; Term weighting; Text representation; Classifier

资金

  1. Technological Innovation Fund for Excellent Doctoral Candidates of Beijing Jiaotong University [141097522]
  2. Fundamental Research Funds for the Central Universities [2009YJS026, 2010RC029, 2011JBM030]
  3. National Natural Science Foundation of China [60905028, 90820013, 60875031, 61033013]
  4. 973 project [2007CB311002]
  5. International Joint Research Project of the Ministry of Science and Technology of China [8-06J]
  6. SRF for ROCS, SEM

向作者/读者索取更多资源

Text representation has received extensive attention in text mining tasks. There are various text representation models. Among them, vector space model is the most commonly used one. For vector space model, the core technique is term weighting. To date, a great deal of different term-weighting methods have been proposed, which can be divided into supervised group and unsupervised group. However, it is not advisable to use these two groups of methods directly in semi-supervised applications. In semi-supervised applications, the majority of the supervised term-weighting methods are not applicable as the label information is insufficient; meanwhile, the unsupervised term-weighting methods cannot make use of the provided category labels. Thus, a semi-supervised learning framework for iteratively revising the text representation by an EM-like strategy is proposed in this paper. Furthermore, a new supervised term-weighting method t f.sd f is proposed. T f.sd f has the ability to emphasize the importance of terms that are unevenly distributed among all the classes and weaken the importance of terms that are uniformly distributed. Experimental results on real text data show that the proposed semi-supervised learning framework with the aid of t f.sd f performs well. Also, t f.sd f is shown to be efficient for supervised learning.

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