The Impact Of Social Media In The Fight Against The Spread Of
Coronavirus (Covid-19) Pandemic In Anambra State, Nigeria
- URL: http://arxiv.org/abs/2206.05548v1
- Date: Sat, 11 Jun 2022 15:27:53 GMT
- Title: The Impact Of Social Media In The Fight Against The Spread Of
Coronavirus (Covid-19) Pandemic In Anambra State, Nigeria
- Authors: Onuegbu Okechukwu Christopher, Joseph Oluchukwu Wogu, and Jude Agbo
- Abstract summary: The study was designed as a survey with close-ended questionnaire distributed to 400 respondents.
It also revealed that the social media is being utilised by individuals, NGOs and government in the fight against the spread of coronavirus in Anambra state.
The study concluded that social media has much benefits than negative impact, and should be used to contain the spread of coronavirus.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This study examined the impact of social media in the fight against the
spread of coronavirus (COVID-19) pandemic in Anambra state, Nigeria. The key
objectives are to: find out if the numbers of social media users increased in
Anambra state since the wake of coronavirus pandemic; find out if the social
media is being utilised in the fight against the spread of coronavirus pandemic
in Anambra state; find out how the social media is being utilised in the fight
against the spread of coronavirus pandemic in Anambra state; and discover the
impact of social media in the fight against the spread of coronavirus pandemic
in Anambra State. It was anchored on Agenda Setting Theory, and the
Technological Determinism Theory (TDT). The study was designed as a survey with
close-ended questionnaire distributed to 400 respondents. The findings of this
study revealed that usage and accessibility of social media increased in
Anambra state because of coronavirus pandemic. It also revealed that the social
media is being utilised by individuals, NGOs and government in the fight
against the spread of coronavirus in Anambra state. The study also found that
the social media is being utilised to gather and disseminate information,
study, transact businesses, among other things. The finding also showed that
the social media has positive impact in the fight against the spread of
coronavirus in Anambra state. The study concluded that social media has much
benefits than negative impact, and should be used to contain the spread of
coronavirus. It, among other things, recommended training and empowerment of
the citizens on effective utilisation of social media to create impact in the
society.
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