Automated Classification of PubMed Texts for Disambiguated Annotation Using Text and Data Mining

  • Choi, Yun-Jeong (Department of Computer Science & Engineering, Ewha Institute of Science & Technology, Ewha Womans University) ;
  • Park, Seung-Soo (Department of Computer Science & Engineering, Ewha Institute of Science & Technology, Ewha Womans University)
  • 발행 : 2005.09.22

초록

Recently, as the size of genetic knowledge grows faster, automated analysis and systemization into high-throughput database has become hot issue. One essential task is to recognize and identify genomic entities and discover their relations. However, ambiguity of name entities is a serious problem because of their multiplicity of meanings and types. So far, many effective techniques have been proposed to analyze documents. Yet, accuracy is high when the data fits the model well. The purpose of this paper is to design and implement a document classification system for identifying entity problems using text/data mining combination, supplemented by rich data mining algorithms to enhance its performance. we propose RTP ost system of different style from any traditional method, which takes fault tolerant system approach and data mining strategy. This feedback cycle can enhance the performance of the text mining in terms of accuracy. We experimented our system for classifying RB-related documents on PubMed abstracts to verify the feasibility.

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