Publication details

Automated Selection of Interesting Medical Text Documents by the TEA Text Analyzer

Authors

ŽIŽKA Jan BOUREK Aleš

Year of publication 2002
Type Article in Proceedings
Conference Third International Conference on Intelligent Text Processing and Computational Linguistics CICLing-2002 Proceedings, Mexico City, February 2002.
MU Faculty or unit

Faculty of Informatics

Citation
Field Use of computers, robotics and its application
Keywords machine learnig; text-document classification; automated selection; unstructured text; Bayes classification; dictionary modification
Description The paper briefly describes the experience in the automated selection of interesting medical text documents by the TEA text analyzer based on the naive Bayes classifier. Even if the used type of the classifier provides generally good results, physicians needed certain supporting functions to obtain really interesting medical text documents, for example, from resources like the Internet. The influence of the functions is summarized and discussed. In addition, some remaining problems are mentioned.
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