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Twitter Sentiment Analysis Using Machine Learning

Pasunooru Santosh Reddy, Bheempaka Sai Kumar, Reddy Reddy Jahnavi Reddy, ,
Affiliations
IV Year,CSE Dept,CVR College of Engineering, Vastunagar, Mangalpalli (V), Ibrahimpatnam (M), Rangareddy (D), Telangana , India
:10.22362/ijcert/2021/v8/i11/v8i1101


Abstract
Sentiment analysis is the process of identifying and categorising the emotions expressed in text. When tweets are analysed, they typically generate a large amount of sentiment data. This information allows us to better understand people's perspectives on a variety of issues. This study tries to classify tweets based on their sentiment. They can express either positive or negative emotions. Twitter is a social networking and micro blogging platform that allows users to post 140-character status updates or opinions. It has about 200 million registered users, 100 million active users, and half of them log in every day, resulting in nearly 250 million tweets per day. Because of the widespread use, we want to reflect the prevalent attitude by analysing tweets. Predicting political elections and macroeconomic phenomena like stock exchanges necessitates a look at public sentiment. We attempt to categorise the tweets as positive or negative. To represent the "tweet," it must also extract valuable elements from the text, such as unigrams and bigrams. We use machine learning methods to analyse sentiment using the collected features. Individual models did not provide high accuracy on their own. So we created an Ensemble Model that predicts based on a majority vote using Naive Bayes, Logistic Regression, and Support Vector Machines.


Citation
Pasunooru Santosh Reddy,Bheempaka Sai Kumar,Reddy Reddy Jahnavi Reddy."Twitter Sentiment Analysis Using Machine Learning". International Journal of Computer Engineering In Research Trends (IJCERT) ,ISSN:2349-7084 ,Vol.8, Issue 11,pp.179-185, November - 2021, URL :https://ijcert.org/ems/ijcert_papers/V8I1101.pdf,


Keywords : Sentiment analysis, twitter, Machine Learning , Ensemble Model, Naive Bayes, Logistic Regression, and Support Vector Machines.

References
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DOI Link : https://doi.org/10.22362/ijcert/2021/v8/i11/v8i1101

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Citations Indices All
Citations 1026
h-index 14
i10-index 20
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2018 14.5%
2017 16.6%
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DOI:10.22362/ijcert