A Relevance-Based Superimposition Model for Effective Information Retrieval
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概要
- 論文の詳細を見る
Semantic ambiguity is a serious problem in information retrieval. Query expansion has been proposed as one method of solving this problem. However, queries tend not to have much information for fitting query vectors to the latent semantics, which are difficult to express in a few query terms given by users. We propose a document vector modification method that modifies document vectors based on the relevance of documents. This method is expected to show better retrieval effectiveness than conventional methods. In this paper, we evaluate our method through retrieval experiments in which the relevance of documents extracted from scientific papers is assessed, and a comparison with tf・idfis described.
- 社団法人電子情報通信学会の論文
- 2000-12-25
著者
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Adachi J
National Inst. Informatics Tokyo Jpn
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KANAZAWA Teruhito
The Graduate School of Engineering, The University of Tokyo
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TAKASU Atsuhiro
NII
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ADACHI Jun
NII
関連論文
- A Relevance-Based Superimposition Model for Effective Information Retrieval
- Decomposing the Web Graph into Parameterized Connected Components(Information Processing Technology for Web Utilization)