Automatic Acronym Dictionary Construction Based on Acronym Generation Types
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概要
- 論文の詳細を見る
In this paper, we propose a new model off automatically constructing an acronym dictionary. The proposed model generates possible acronym candidates from a definition, and then verifies each acronymdefinition pair with a Naive Bayes classifier based on web documents. In order to achieve high dictionary quality, the proposed model utilizes the characteristics of acronym generation types: a syllable-based generation type, a word-based generation type, and a mixed generation type. Compared with a previous model recognizing an acronym-definition pair in a document, the proposed model verifying a pair in web documents improves approximately 50% recall on obtaining acronym-definition pairs from 314 Korean definitions. Also, the proposed model improves 7.25% F-measure on verifying acronym-definition candidate pairs by utilizing specialized classifiers with the characteristics of acronym generation types.
- (社)電子情報通信学会の論文
- 2008-05-01
著者
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Park So‐young
Sangmyung Univ. Seoul Kor
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Rim Hae‐chang
Korea Univ. Kor
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Rim Hae-chang
Department Of Computer Science Korea University
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Rim Hae
Department Of Computer Science Korea University
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Park So-young
Division Of Digital Media Technology Sangmyung University
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Rim Hae-chang
Department Of Computer Science & Engineering Korea University
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Rim Hae-chang
Department Of Computer Science Engineering Korea University
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YOON Yeo-Chan
Speech/Language Information Research Center, ETRI
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SONG Young-In
Department of Computer Science Engineering, Korea University
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RHEE Dae-Woong
Division of Digital Media Technology, SangMyung University
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Song Young-in
Dept. Of Computer And Radio Communications Engineering Korea Univ.
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Yoon Yeo-chan
Speech/language Information Research Center Etri
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Rhee Dae-woong
Division Of Digital Media Technology Sangmyung University
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