COVID - 19推特情绪的比较研究

Anupama J Nair, V. G, Aadithya Vinayak
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引用次数: 25

摘要

最近,有关新冠肺炎的推文以前所未有的速度增加,包括积极、消极和中立的推文。这种推文的多样性吸引了研究人员进行情绪分析,并分析了大众对新冠病毒的各种情绪。传统的情感分析技术只能找出极性,并将其分类为积极,消极或中性的推文。作为进一步的研究,本研究尝试使用Logistic回归情感分析、VADER情感分析和BERT情感分析来发现推文的情感。本文提出的分析方法对社交媒体语境中的情感表达更加敏感,并且可以在领域的基础上进行泛化。尽管执行了3种不同的算法,但除情感分析算法外的所有预处理和进一步步骤将保持相同。相同的处理步骤将有助于比较提出的三种不同的情感分析算法。此外,这种拟议的分析有许多有用的应用,因为这项工作为政府官员甚至卫生官员获得了公众意见,并帮助他们根据所获得的结果开展工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative study of Twitter Sentiment On COVID - 19 Tweets
Recently, the number of tweets on COVID-19 are increasing at an unprecedented rate by including positive, negative and neutral tweets. This diversified nature of tweets has attracted the researchers to perform sentiment analysis and analyze the varied emotions of a large public towards COVID-19. The traditional sentiment analysis techniques will only find out the polarity and classify it as either positive, negative or neutral tweets. As an advanced step, the proposed research work attempts to find the sentiment of tweets using Logistic Regression sentiment analysis, VADER sentiment analysis and BERT sentiment analysis. The proposed analysis methods are more sensitive to sentiment expressions in social media contexts, while it can be generalized on the basis of the domain. Even though 3 different algorithms are implemented, all the preprocessing and further steps excluding the sentiment analysis algorithm will remain identical. The identical processing steps will help to compare the proposed three different sentiment analysis algorithms. Furthermore, there are many useful applications with this proposed analysis, as this work obtains a public opinion for the government officials or even for the health officials and help them to work on the basis of the obtained results.
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