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논문 리스트

2009
SVD-LDA: a combined model for text classification SVD-LDA: a combined model for text classification
한국정보처리학회
박혁로
논문정보
Publisher
Journal of Information Processing Systems
Issue Date
2009-03-02
Keywords
-
Citation
-
Source
-
Journal Title
-
Volume
5
Number
1
Start Page
5
End Page
10
DOI
ISSN
1976913X
Abstract
Text data has always accounted for a major portion of the world’s information. As the volume of information increases exponentially, the portion of text data also increases significantly. Text classification is therefore still an important area of research. LDA is an updated, probabilistic model which has been used in many applications in many other fields. As regards text data, LDA also has many applications, which has been applied various enhancements. However, it seems that no applications take care of the input for LDA. In this paper, we suggest a way to map the input space to a reduced space, which may avoid the unreliability, ambiguity and redundancy of individual terms as descriptors. The purpose of this paper is to show that LDA can be perfectly performed in a “clean and clear” space. Experiments are conducted on 20 News Groups data sets. The results show that the proposed method can boost the classification results when the appropriate choice of rank of the reduced space is determined.

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박혁로 소프트웨어공학과