Sentiment analysis of Twitter data: Case study on digital India

P. Mishra, Ranjana Rajnish, Pankaj Kumar
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引用次数: 50

Abstract

Nowadays Opinion Mining has become an emerging topic of research due to lot of opinionated data available on Blogs & social networking sites. Tracking different types of opinions & summarizing them can provide valuable insight to different types of opinions to users who use Social networking sites to get reviews about any product, service or any topic. Analysis of opinions & its classification on the basis of polarity (positive, negative, neutral) is a challenging task. Lot of work has been done on sentiment analysis of Twitter data and lot needs to be done. In our work we are trying to perform sentiment analysis of the Twitter data set that expresses opinion about Modi ji's Digital India Campaign. In my work, I have collected these sentiments and classified polarity of sentiments in these opinions w.r.t. Positive, Negative or Neutral. Twitter data is collected for analysis using Twitter API. Out of the two widely used approaches used for sentiment analysis, Machine Learning & Dictionary Based approach, we are using Dictionary Based approach to analyze data posted by different users. Then polarity classification of this data is done. In this paper we discuss sentiment analysis of Twitter data, existing tools available for sentiment analysis, related work, framework used, case study to demonstrate the work followed by the results section. Results clearly demonstrate that the 50% of the collected opinions are positive, 20% are Negative and rests 30% are neutral.
Twitter数据的情感分析:以数字印度为例
如今,由于博客和社交网站上有大量自以为是的数据,意见挖掘已经成为一个新兴的研究课题。跟踪不同类型的意见并对其进行总结,可以为使用社交网站获取有关任何产品、服务或任何主题的评论的用户提供有价值的见解。基于极性(积极、消极、中性)的意见分析与分类是一项具有挑战性的任务。在Twitter数据的情感分析方面已经做了很多工作,还有很多工作需要做。在我们的工作中,我们试图对Twitter数据集进行情感分析,这些数据集表达了对莫迪的数字印度运动的看法。在我的工作中,我收集了这些情绪,并将这些观点中的情绪极性分类为积极的,消极的或中性的。使用Twitter API收集Twitter数据进行分析。在两种广泛用于情感分析的方法中,机器学习和基于字典的方法,我们使用基于字典的方法来分析不同用户发布的数据。然后对这些数据进行极性分类。在本文中,我们讨论了Twitter数据的情感分析,现有的情感分析工具,相关工作,使用的框架,案例研究来展示工作,然后是结果部分。结果清楚地表明,50%的收集意见是积极的,20%是消极的,剩下的30%是中立的。
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