Extractive text summarization using deep natural language fuzzy processing

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Abstract

Text summarization is most trending research areas in a modern context. The main aim of this project is to reduce text size while preserving the information underlying into it. In summary construction level, in general, given complex task which are basically will involve with deep natural language fuzzy processing methodologies. In general, an extractive based summary method is the very simple original text of subset of which will not guarantee as best narrative coherence output, because they are most conveniently representing an approximate summarized content from given text-based only on relevance judgment. In an automatic process of fuzzy summarization which is divided into the following steps: Pre-processing (sentence segmentation, tokenization, stop words removal), Feature Extraction, Sentence Scoring, Sentence Ranking and Summary Extraction.

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Neelima, G., Veeramanickam, M. R. M., Gorbachev, S., & Kale, S. A. (2019). Extractive text summarization using deep natural language fuzzy processing. International Journal of Innovative Technology and Exploring Engineering, 8(6 Special Issue 4), 990–993. https://doi.org/10.35940/ijitee.F1203.0486S419

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