Abstract

The outbreak of coronavirus disease (COVID-19) has affected almost all of the countries of the world, and has had significant social and psychological effects on the population. Nowadays, social media platforms are being used for emotional self-expression towards current events, including the COVID-19 pandemic. The study of people’s emotions in social media is vital to understand the effect of this pandemic on mental health, in order to protect societies. This work aims to investigate to what extent deep learning models can assist in understanding society’s attitude in social media toward COVID-19 pandemic. We employ two transformer-based models for fine-grained sentiment detection of Arabic tweets, considering that more than one emotion can co-exist in the same tweet. We also show how the textual representation of emojis can boost the performance of sentiment analysis. In addition, we propose a dynamically weighted loss function (DWLF) to handle the issue of imbalanced datasets. The proposed approach has been evaluated on two datasets and the attained results demonstrate that the proposed BERT-based models with emojis replacement and DWLF technique can improve the sentiment detection of multi-dialect Arabic tweets with an F1-Micro score of 0.72.

Highlights

  • Corona virus disease or COVID-19 was first reported by the Chinese public health authorities in the city of Wuhan in 2019 to be characterized later as a pandemic by theWorld Health Organization (WHO)

  • We compare the performance of each model (Baseline, AraBERT, and MARBERT) using SenWave dataset

  • This study investigated to what extent accurate deep learning models can assist in understanding society’s behavior during the COVID-19 pandemic

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Summary

Introduction

Corona virus disease or COVID-19 was first reported by the Chinese public health authorities in the city of Wuhan in 2019 to be characterized later as a pandemic by the. This pandemic affected almost all world countries with more than 143 million reported cases and over 3 million deaths [1]. Many people around the world have lost their jobs during this pandemic, or have been forced to study or work remotely from home. The study of people’s feelings is vital to investigate the effect of COVID-19 pandemic on mental health. There are numerous studies analyzing the impacts of the pandemic on healthcare, medical treatments, and the economy, there has been relatively little emphasis on studying people’s feelings during this pandemic. It is crucial to understand the personal level in order to protect societies from distress, anxiety, and mental illness

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