Abstract

The current population worldwide extensively uses social media to share thoughts, societal issues, and personal concerns. Social media can be viewed as an intelligent platform that can be augmented with a capability to analyze and predict various issues such as business needs, environmental needs, election trends (polls), governmental needs, etc. This has motivated us to initiate a comprehensive search of the COVID-19 pandemic-related views and opinions amongst the population on Twitter. The basic training data have been collected from Twitter posts. On this basis, we have developed research involving ensemble deep learning techniques to reach a better prediction of the future evolutions of views in Twitter when compared to previous works that do the same. First, feature extraction is performed through an N-gram stacked autoencoder supervised learning algorithm. The extracted features are then involved in a classification and prediction involving an ensemble fusion scheme of selected machine learning techniques such as decision tree (DT), support vector machine (SVM), random forest (RF), and K-nearest neighbour (KNN). all individual results are combined/fused for a better prediction by using both mean and mode techniques. Our proposed scheme of an N-gram stacked encoder integrated in an ensemble machine learning scheme outperforms all the other existing competing techniques such unigram autoencoder, bigram autoencoder, etc. Our experimental results have been obtained from a comprehensive evaluation involving a dataset extracted from open-source data available from Twitter that were filtered by using the keywords “covid”, “covid19”, “coronavirus”, “covid-19”, “sarscov2”, and “covid_19”.

Highlights

  • Gathering of people opinion and analyzing data in social media has interesting facts due to its real time interactive in nature

  • We explored the deep learning concept in real-time system for predicting COVID-19, and it has been developed into two phases

  • This research article has focused on a comprehensive real-time sentimental data analysis and predictions based on streaming data from Twitter, which are related to the dangerous COVID-19 pandemic

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Summary

Introduction

Gathering of people opinion and analyzing data in social media has interesting facts due to its real time interactive in nature. Current research work has relied on social media networks as well as sentiment analysis in order to tracking people’s behaviour and opinions about current scenario. Information of corona-virus was distributed across social web sites. Researchers had recently implemented sentiment analysis to classify attitudes of people from tweets based on healthcare corona-virus pandemic sentiment analysis. Social media networks are presenting various views, emotion and opinion of all users. These sentiment analyses will produce remarkable findings [1,2]

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