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Chinese Question Classification |
Chinese Question Classification
Question classification plays an important role
in question-answering systems. Chinese question
classification is the process that analyzes a
question and labels it based on its question
type and expected answer type. We propose an
integrated knowledge-based and machine learning
approach for Chinese question classification
that focuses on factoid question answering. We
develop a Chinese question classification scheme
for CLQA C-C (Cross Language Question Answering
Chinese to Chinese) factoid question answering,
and define a coarse-grained and fine-grained
classification taxonomy for a Chinese
question-answering system. We adopt INFOMAP
inference engine to support the knowledge-based
approach for Chinese questions, which can be
formulated as templates and use SVM (Support
Vector Machines) as the machine learning
approach for large collections of labeled
Chinese questions. Our experimental results show
that the accuracy of Chinese question
classification using INFOMAP alone is 88%, and
73.5% with SVM alone. In contrast,
classification based on a hybrid approach that
incorporates SVM and INFOMAP yields an accuracy
rate of 92%.
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Wen-Lian Hsu
Professor, IEEE Fellow
Research Fellow
Institute of Information Science ,
Academia Sinica, Taipei,
Taiwan, R. O. C. Phone:
886-2-27883799 ext.1804 Fax:
886-2-27824814 E-mail: hsu@iis.sinica.edu.tw
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Ting-Yi Sung
Research Fellow
Institute of Information Science ,
Academia Sinica, Taipei,
Taiwan, R. O. C. Phone:
886-2-27883799 ext.1711 Fax:
886-2-27824814 E-mail:
tsung iis.sinica.edu.tw¡@ |
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