A unified deep neuro-fuzzy approach for COVID-19 twitter sentiment classification

Author:

Bahuguna Aman1,Yadav Deepak1,Senapati Apurbalal2,Saha Baidya Nath3

Affiliation:

1. Chandigarh University, Punjab, India

2. Central Institute of Technology, Kokrajhar, Assam, India

3. Concordia University of Edmonton, Alberta, T5B 4E4, Canada

Abstract

Covid-19 braces serious mental health crisis across the world. Since a vast majority of the population exploit social media platforms such as twitter to exchange information, rapid collecting and analyzing social media data to understand personal well-being and subsequently adopting adequate measures could avoid severe socio-economic damage. Sentiment analysis on twitter data is very useful to understand and identify the mental health issues. In this research, we proposed a unified deep neuro-fuzzy approach for Covid-19 twitter sentiment classification. Fuzzy logic has been a very powerful tool for twitter data analysis where approximate semantic and syntactic analysis is more relevant because correcting spelling and grammar in tweets are merely obnoxious. We conducted the experiment on three challenging COVID-19 twitter sentiment datasets. Experimental results demonstrate that fuzzy Sugeno integral based ensembled classifiers succeed over individual base classifiers.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference22 articles.

1. Arabic sentiment analysis using deep learning for covid-19 twitter data;Alhumoud;IJCSNS International Journal of Computer Science and Network Security,2020

2. Weighted fuzzy rule based sentiment prediction analysis on tweets;Basha;International Journal of Grid and Distributed Computing,2017

3. Sentiment analysis of covid-19 tweets by deep learning classifiers— a study to show how popularity is affecting accuracy in social media;Chakraborty;Applied Soft Computing,2020

4. Sentimental analysis of covid-19 tweets using deep learning models;Chintalapudi;Infectious Disease Reports,2021

5. Understanding public perceptions of covid-19 contact tracing apps: Artificial intelligence–enabled social media analysis;Cresswell;J Med Internet Res,2021

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