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http://dx.doi.org/10.5392/JKCA.2010.10.12.457

Customized Information Analysis System Using National Defense News Data  

Choi, Jung-Whoan (국방기술품질원)
Lim, Chea-O (국방기술품질원)
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Abstract
Customized information analysis system is a software system that can help to extract useful information from non-structured natural language data, process the information to customized form, and provide future forecast and reasoning information. To implement the information analysis system, we need natural language processing technology to analyze natural language, information extraction technology to detect necessary entity and its relationship from text, and data mining technology to discover new and unknown information from extracting data. This paper suggest virtual customized information analysis system processing national defense news data and introduce base technologies for information analysis.
Keywords
Information Analysis; Customized Information Analysis System; National Defense News;
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