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Published Articles >> Table of Contents >> Abstract
International Workshop on Challenges in Web Information Retrieval and Integration
pp. 122-127
A Comparative Study of Feature Vector-Based Topic Detection Schemes A Comparative Study of Feature Vector-Based Topic Detection Schemes
Masafumi Hamamoto, Graduate School of Systems and Information Engineering
Hiroyuki Kitagawa, Center for Computational Science, University of Tsukuba
Jia-Yu Pan, Computer Science Department Carnegie Mellon University
Christos Faloutsos, Computer Science Department Carnegie Mellon University
Full Article Text:

DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/WIRI.2005.1
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| Abstract |
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Topic detection is an important subject when voluminous
text data is sent continuously to a user. We examine
a method to detect topics in text data using feature vectors.
Feature vectors represent the main distribution of data and
they are obtained by various data analysis methods. This
paper examines three methods: Singular Value Decomposition
(SVD), clustering, and Independent Component Analysis
(ICA). SVD and clustering are popular existing methods.
Clustering, especially, is applied to many topic detection
methods. ICA was recently developed in signal processing
research. In applications related to text data, however,
ICA has not been compared with SVD and clustering, nor
has its relationship with them been explored. This paper reports
comparative experiments for these three methods and
then shows properties as they apply to text data.
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Additional Information
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Citation:
Masafumi Hamamoto, Hiroyuki Kitagawa, Jia-Yu Pan, Christos Faloutsos,
"A Comparative Study of Feature Vector-Based Topic Detection Schemes A Comparative Study of Feature Vector-Based Topic Detection Schemes,"
wiri,
pp. 122-127,
International Workshop on Challenges in Web Information Retrieval and Integration,
2005
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