Visual Exploratory Data Analysis of the Covid-19 Vaccination Progress in
Nigeria
- URL: http://arxiv.org/abs/2208.09650v1
- Date: Sat, 20 Aug 2022 09:52:18 GMT
- Title: Visual Exploratory Data Analysis of the Covid-19 Vaccination Progress in
Nigeria
- Authors: Ugochukwu Orji, Chikodili Ugwuishiwu, Mathew Okoronkwo, Caroline
Asogwa, Nnaemeka Ogbene
- Abstract summary: Since the covid-19 vaccine came to Nigeria; 18,728,188 people have been fully vaccinated as at May 31st, 2022.
This is roughly 10% of the Nigerian population estimated at 206.7 million.
The data used for this research contain the state-by-state breakdown of Covid-19 vaccine distribution recorded between March 5th, 2021, and May 31st, 2022.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The coronavirus outbreak in 2020 devastated the world's economy, including
Nigeria, even resulted in a severe recession. Slowly the country is building
back again, and the vaccines are helping to reduce the spread of covid-19.
Since the covid-19 vaccine came to Nigeria; 18,728,188 people have been fully
vaccinated as at May 31st, 2022. This is roughly 10% of the Nigerian population
estimated at 206.7 million [1]. This paper presents a visual Exploratory Data
Analysis of the covid-19 vaccination progress in Nigeria using the R-tidyverse
package in R studio IDE for data cleaning & analysis, and Tableau for the
visualizations. Our dataset is from the Nigerian National Primary Health Care
Development Agency (NPHCDA) in charge of the vaccines. The data used for this
research contain the state-by-state breakdown of Covid-19 vaccine distribution
recorded between March 5th, 2021, and May 31st, 2022. This paper aims to show
how these data analytics tools and techniques can be useful in finding insights
in raw data by presenting the results of the EDA visually thus reducing the
ambiguity and possible confusions that is associated with data in tables.
Furthermore, our findings contribute to the growing literature on Covid-19
research by showcasing the Covid-19 vaccination trend in Nigeria and the state
by state distribution.
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