Extracting Key Paragraph Based On Topic And Event Detection Towards Multi-Document Summarization
نویسندگان
چکیده
This paper proposes a me thod for extracting key paragraph for multi-document summarizat ion based on distinction between a topic and a~ event. A topic emd an event are identified using a simple criterion called domain dependency of words. The method was tested on the TDT1 corpus which has been developed by the T D T Pilot S tudy and the result can be regarded as promising the idea of domain dependency of words effectively employed.
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