Download PDFOpen PDF in browserText Summarization Framework Using Machine LearningEasyChair Preprint 24264 pages•Date: January 20, 2020AbstractAutomatic text summarization is an essential naturallanguage processing application that goals to summarize agiven textual content into a shorter model. The fast growthin media information transmission over the Internet demandstext summarization using neural network from asynchronouscombination of text. This paper represents a framework thatutilizes the techniques of NLP technique to examine the elab-orative information contained in multi-modal statistics and toenhance the aspects of text summarization. The basic conceptis to bridge the semantic gaps among text content. After, thegenerated summary for important information through multi-modal topic modeling. Finally, all the multi-modal factors areconsidered to generate a textual summary by maximizing theimportance, non-redundancy, credibility and scope through theallocated accumulation of submodular features. The experimentalresult shows that Text Summarization framework outperformsother competitive techniques. Keyphrases: Sentence Embedding, Summarization, feature selection, machine learning
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