The Michigan Single and Multi-document Summarizer for DUC 2002
نویسندگان
چکیده
The MEAD summarization system, currently being developed at the University of Michigan, produces a summary of the user’s desired length, based on one or more source documents. Recently, MEAD has been slightly adapted, and is now compatible for the summarization of this year’s Document Understanding Conference (DUC 2002) articles. In addition, we have recently introduced an interactive, online news summarization system, NewsInEssence, which uses MEAD as the backend summarizer.
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تاریخ انتشار 2002