Catch Phrase Extraction from Legal Documents Using Deep Neural Network
نویسندگان
چکیده
This paper is based on finding and extracting important key phrases (catchphrase) from a document from which the the document can be summarized. This is important as this will reduce time consumption in summarization of documents. This work is realizedwith the help of deep neural network to train anmodel for recognizing such important key phrases based on various calculated parameters.
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