Abstract

The COVID-19 pandemic created a global emergency in many sectors. The spread of the disease can be subdued through timely vaccination. The COVID-19 vaccination process in various countries is ongoing and is slowing down due to multiple factors. Many studies on European countries and the USA have been conducted and have highlighted the public’s concern that over-vaccination results in slowing the vaccination rate. Similarly, we analyzed a collection of data from the gulf countries’ citizens’ COVID-19 vaccine-related discourse shared on social media websites, mainly via Twitter. The people’s feedback regarding different types of vaccines needs to be considered to increase the vaccination process. In this paper, the concerns of Gulf countries’ people are highlighted to lessen the vaccine hesitancy. The proposed approach emphasizes the Gulf region-specific concerns related to COVID-19 vaccination accurately using machine learning (ML)-based methods. The collected data were filtered and tokenized to analyze the sentiments extracted using three different methods: Ratio, TextBlob, and VADER methods. The sentiment-scored data were classified into positive and negative tweeted data using a proposed LSTM method. Subsequently, to obtain more confidence in classification, the in-depth features from the proposed LSTM were extracted and given to four different ML classifiers. The ratio, TextBlob, and VADER sentiment scores were separately provided to LSTM and four machine learning classifiers. The VADER sentiment scores had the best classification results using fine-KNN and Ensemble boost with 94.01% classification accuracy. Given the improved accuracy, the proposed scheme is robust and confident in classifying and determining sentiments in Twitter discourse.

Highlights

  • The COVID-19 pandemic created an unprecedented global health emergency

  • We propose a method to improve the accuracy of currently used sentiment analysis tools

  • The natural language processing used in many aspects of the field, such as COVID-19 vaccine tweets’ sentiment scores based on deep and machine learning classification methods, is utilized in this study

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Summary

Introduction

The COVID-19 pandemic created an unprecedented global health emergency. Over the last two years, almost 248 million people have been diagnosed COVID-19 and it has lead to more than 5 million deaths [1]. In an attempt to prevent the spread of COVID-19, countries were forced to enforce several preventive measures in accordance with recommendations from international and local health organizations. These include social distancing, working remotely, wearing face masks, etc. Due to its prevalence and inherent features, the data, and especially linguistic data, from the Twitter platform were generally used by many studies to analyze people’s perceptions regarding different vaccines [12,13,14,15] Such data contain both useful and misleading information [16] regarding different people from different countries, and and entail real-time open opinions and attitudes from various countries.

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