Effective Use of Indirect Dependency for Distributional Similarity
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概要
- 論文の詳細を見る
Distributional similarity is a widely adopted concept to compute lexical semantic relatedness of words. Whereas the calculation is based on the distributional hypothesis and utilizes contextual clues of words, little attention has been paid to what kind of contextual information is effective for the purpose. As one of the ways to extend contextual information, we pay attention to the use of indirect dependency, where two or more words are related via several contiguous dependency relations. We have investigated the effect of indirect dependency using automatic synonym acquisition task, and shown that the performance can be improved by using indirect dependency in addition to normal direct dependency. We have also verified its effectiveness under various experimental settings including weight functions, similarity measures, and context representations, and shown that context representations which incorporate richer syntactic information are more effective.
- Information and Media Technologies 編集運営会議の論文
著者
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Ogawa Yasuhiro
Graduate School Of Engineering Osaka University
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Hagiwara Masato
Graduate School Of Information Science Nagoya University
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Hagiwara Masato
Graduate School of Information Science, Nagoya University
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- Effective use of indirect dependency for distributional similarity (自然言語処理特集号 言語的オントロジーの構築・連携・利用)
- Effective Use of Indirect Dependency for Distributional Similarity
- Supervised Synonym Acquisition Using Distributional Features and Syntactic Patterns
- A Comparative Study on Effective Context Selection for Distributional Similarity