Searching and computing for vocabularies with semantic correlations from Chinese Wikipedia (自然言語処理)
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概要
- 論文の詳細を見る
This paper introduces our research and experiment on searching for semantically correlated vocabularies in Chinese Wikipedia pages and computing semantic correlations. Based on the 54, 745 structured documents generated from Wikipedia pages, we explore about 400,000 pairs of Wikipedia vocabularies considering of hyperlinks, overlapped text and document positions. Semantic relatedness is calculated based on the relatedness of Wikipedia documents. From comparing experiment we analyze the reliability of our measures and some other properties.
- 一般社団法人情報処理学会の論文
- 2008-03-27
著者
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REN Fuji
Institute of Technology and Science, The University of Tokushima
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Ren Fuji
Institute Of Technology And Science The University Of Tokushima
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Li Yun
Graguate School Of Advanced Technology And Science The University Of Tokushima
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HUANG Kaiyan
Graguate School of Advanced Technology and Science, The University of Tokushima
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TSUCHIYA Seiji
Institute of Technology and Science, The University of Tokushima
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Huang Kaiyan
Graguate School Of Advanced Technology And Science The University Of Tokushima
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Tsuchiya Seiji
Institute Of Technology And Science The University Of Tokushima
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