基于位置的推文对CAA的情感研究。

Geetika Vashisht, Yash Naveen Sinha
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引用次数: 16

摘要

随着人们越来越多地使用twitter来表达自己的观点或消除自己的情绪歧义,利用情绪分析来分析大众意见,从而得出手头主题的极性是可行的。情感分析(SA)已经彻底改变了当今人们感知信息的方式。受此启发,本文研究了备受争议的法案——《公民修正案法案》(civil Amendment act, CAA),方法是分析带有地理标签的推文,并由六名注释者手工注释和交叉验证。据我们所知,这是第一篇使用SA分析CAA的论文,并提供了全国各州民意的明确统计数据。本文采用机器学习方法对推文进行情感分析。使用支持向量机分类器将推文分为积极、消极和中性三类。
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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Sentimental study of CAA by location-based tweets.

As people progressively resort to twitter to express their opinions or to disambiguate their sentiment, it's feasible to analyze the mass opinion to conclude the polarity of the subject at hand using sentiment analysis. Sentiment Analysis (SA) has revolutionized the way information is perceived today. Inspired by this, the work in this paper investigates the much-debated act- the Citizenship Amendment Act (CAA) by analyzing opinionated geo-tagged tweets, manually annotated and cross verified by six annotators. This is the first paper to the best of our knowledge to analyse CAA using SA and to provide a clear statistics of the mass opinion across the states of the nation. In this paper, machine learning approach is used for sentiment analysis of tweets. Support vector machine classifier is used to classify the tweets into three classes viz. positive, negative and neutral.

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