Abstract

Sustainable development plays a vital role in information and communication technology. In times of pandemics such as COVID-19, vulnerable people need help to survive. This help includes the distribution of relief packages and materials by the government with the primary objective of lessening the economic and psychological effects on the citizens affected by disasters such as the COVID-19 pandemic. However, there has not been an efficient way to monitor public funds’ accountability and transparency, especially in developing countries such as Nigeria. The understanding of public emotions by the government on distributed palliatives is important as it would indicate the reach and impact of the distribution exercise. Although several studies on English emotion classification have been conducted, these studies are not portable to a wider inclusive Nigerian case. This is because Informal Nigerian English (Pidgin), which Nigerians widely speak, has quite a different vocabulary from Standard English, thus limiting the applicability of the emotion classification of Standard English machine learning models. An Informal Nigerian English (Pidgin English) emotions dataset is constructed, pre-processed, and annotated. The dataset is then used to classify five emotion classes (anger, sadness, joy, fear, and disgust) on the COVID-19 palliatives and relief aid distribution in Nigeria using standard machine learning (ML) algorithms. Six ML algorithms are used in this study, and a comparative analysis of their performance is conducted. The algorithms are Multinomial Naïve Bayes (MNB), Support Vector Machine (SVM), Random Forest (RF), Logistics Regression (LR), K-Nearest Neighbor (KNN), and Decision Tree (DT). The conducted experiments reveal that Support Vector Machine outperforms the remaining classifiers with the highest accuracy of 88%. The “disgust” emotion class surpassed other emotion classes, i.e., sadness, joy, fear, and anger, with the highest number of counts from the classification conducted on the constructed dataset. Additionally, the conducted correlation analysis shows a significant relationship between the emotion classes of “Joy” and “Fear”, which implies that the public is excited about the palliatives’ distribution but afraid of inequality and transparency in the distribution process due to reasons such as corruption. Conclusively, the results from this experiment clearly show that the public emotions on COVID-19 support and relief aid packages’ distribution in Nigeria were not satisfactory, considering that the negative emotions from the public outnumbered the public happiness.

Highlights

  • Introduction conditions of the Creative CommonsSustainability helps society in many ways by improving wellbeing and quality of life.Sustainable societies include many various sectors that encompass businesses, government agencies, environmentalists, and civic associations

  • Models Comparison on Macro Average comparison on macro average. These results indicate that Support Vector Machine (SVM), Logistics Regression (LR), and Random Forest (RF) achieved higher scores on weighted. These results indicate that SVM, LR, and RF achieved higher scores on weighted and and average micro results from all models than Multinomial Naïve Bayes (MNB), Decision Tree (DT), and K-Nearest Neighbor (KNN)

  • Based on the experiment conducted, the results clearly show that the public emotions on COVID-19 relief aid package distribution in Nigeria were not satisfactory because the negative emotions expressed by the public outnumbered the public happiness

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Summary

Introduction

Sustainability helps society in many ways by improving wellbeing and quality of life. Sustainable societies include many various sectors that encompass businesses, government agencies, environmentalists, and civic associations. Sustainability 2021, 13, 3497 to be innovative to boost their local economy for a healthy ecosystem [1]. Sustainable development goals (SGDs) play an essential role in shaping daily societal activities, especially in under-developed countries such as Nigeria. The impact of the COVID-19 pandemic has caused the reversal of the United Nations target of lifting millions of people out of poverty. There will be an additional 44 million people who will still live in extreme poverty by 2030 due to the impact of the COVID-19 pandemic. These would bring the total number of people globally living in poverty to 905 million by 2030

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