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Intelligent
System for Topic Survey in MEDLINE by Keyword Recommendation and Learning
Text Characteristics |
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Mar. 2th, 2004 |
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Pei-Yi, Huang |
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Abstract |
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Selecting MEDLINE records by keywords and combinations sometimes does
not achieve efficient and high quality results as people interested. This
intelligent system had implemented for assisting experts in selecting MEDLINE
records for database construction purposes with two features: a learning
mechanism extract patterns of interests abstracts of MEDLINE records. And
keyword recommendation system which assists experts’ knowledge in unexpected
cases. |
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Source |
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Intelligent System for
Topic Survey in MEDLINE by Keyword Recommendation and Learning Text
Characteristics |
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Reference |
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