Clinical text classification under the Open and Closed Topic Assumptions.

International Journal of Data Mining and Bioinformatics(2009)

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摘要
This paper investigates multi-topic aspects in automatic classification of clinical free text in comparison with general text. In this paper, we facilitate two different views on multi-topics: the Closed Topic Assumption (CTA) and the Open Topic Assumption (OTA). Experimental results show that the characteristics of multi-topic assignments in the Computational Medicine Centre (CMC) Medical NLP Challenge Data is strongly OTA-oriented but general text Reuters-21578 is characterised in the middle of the OTA and CTA spectrum.
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关键词
general text,closed topic assumption,multi-topic aspect,open topic assumption,closed topic assumptions,medical nlp challenge data,cta spectrum,clinical text classification,general text reuters-21578,multi-topic assignment,clinical free text,computational medicine centre
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