Sentiment Analysis of Tweets on the COVID-19 Pandemic Using Machine Learning Techniques

Author:

R. Jothikumar1ORCID,R. Vijay Anand2,P. Visu3,R. Kumar4,S. Susi5,K. R. Kumar6

Affiliation:

1. Shadan College of Engineering and Technology, India

2. Velloe Institute of Technology, India

3. Velammal Enginerring College, India

4. National Institute of Technology, Nagaland, India

5. Shadan Women's College of Engineering and Technology, India

6. Adhiyamaan College of Engineering, India

Abstract

Sentiment evaluation alludes to separate the sentiments from the characteristic language and to perceive the mentality about the exact theme. Novel corona infection, a harmful malady ailment, is spreading out of the blue through the quarter, which thought processes respiratory tract diseases that can change from gentle to extraordinary levels. Because of its quick nature of spreading and no conceived cure, it ushered in a vibe of stress and pressure. In this chapter, a framework perusing principally based procedure is utilized to discover the musings of the tweets related to COVID and its effect lockdown. The chapter examines the tweets identified with the hash tags of crown infection and lockdown. The tweets were marked fabulous, negative, or fair, and a posting of classifiers has been utilized to investigate the precision and execution. The classifiers utilized have been under the four models which incorporate decision tree, regression, helpful asset vector framework, and naïve Bayes forms.

Publisher

IGI Global

Reference17 articles.

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3. Using Opinion Surveys to Track the Public's Response to a Bioterrorist Attack

4. CelikyilmazA.Hakkani-TürD.FengJ. (2010, December). Probabilistic model-based sentiment analysis of twitter messages. In 2010 IEEE Spoken Language Technology Workshop. IEEE.

5. Comparative survey on association rule mining algorithms.;M.Girotra;International Journal of Computers and Applications,2013

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