News text Analysis using Text Summarization and Sentiment Analysis based on NLP

Abir Mishra, Akshat Sahay, M. Pandey, S. Routaray
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Abstract

Every day, at least 2.5 quintillion bytes of data are generated worldwide. This results in information explosion. Excessive information about a subject makes it difficult to focus on the most important concepts and findings. As a result, it becomes challenging for data analysts to determine which data is correct and which data is unnecessary for a given task. Natural Language Processing (NLP) based text summarization is an effective solution to this problem. Text summarization helps to reduce the size of a data or text while retaining the information. At the same time, it is highly difficult to manually summarize lengthy text documents. The primary goal of the proposed text summarization model is to highlight and present consumers with the most pertinent information from the provided text data. Using text summarization and NLTK, this study attempts to propose a text sentiment analysis on news material.
基于NLP的文本摘要和情感分析的新闻文本分析
每天,全球至少产生2.5万亿字节的数据。这导致了信息爆炸。关于某一主题的过多信息使人们难以集中注意力于最重要的概念和发现。因此,对于数据分析人员来说,确定哪些数据是正确的,哪些数据对于给定的任务来说是不必要的变得具有挑战性。基于自然语言处理(NLP)的文本摘要是解决这一问题的有效方法。文本摘要有助于在保留信息的同时减小数据或文本的大小。同时,手动总结冗长的文本文档是非常困难的。所建议的文本摘要模型的主要目标是突出显示并向消费者提供来自所提供文本数据的最相关的信息。本研究尝试使用文本摘要和NLTK对新闻材料进行文本情感分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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