Extractive Multi-Document Summarization using Neural Network
Keywords:
Multi-Document Summarization; Clustering Based; Extractive and Abstractive approach; Ranked Based; LDA Based; Natural Language ProcessingAbstract
Natural language processing gives Text Summarization, which is the unmistakable application for information weight. Content diagram is a course of action of passing on a rundown by reducing the measure of outstanding document and relating essential information of champion report. There is rising a need to give grand chart in less time in light of the way that in exhibit time, the progress of data increments immensely on World Wide Web or on customer's work zones so Multi-Document once-completed is the best mechanical social affair to impact plot in less to time. This paper demonstrates an audit of existing techniques with the erraticism’s including the need of sharp Multi-Document summarizer.
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