Modelling the Information Abundance Factors That Predict Fake News Sharing Behaviour of Social Media Users: Testing the Moderating Role of Resilience

Author:

Guo Mengmeng1,Apuke Oberiri Destiny2ORCID,Tunca Elif Asude3,Gever Celestine Verlumun4ORCID

Affiliation:

1. School of Journalism and Communication, Renmin University of China, China

2. Department of Mass Communication, Taraba State University, Jalingo, Nigeria

3. Department of New Media and Journalism, Faculty of Communication Sciences, The European University of Lefke, Northern Cyprus, Turkey

4. University of Nigeria, Nigeria

Abstract

Fake news is widely shared on social media platforms, and while the literature is expanding, study into the motivations behind such sharing has not yet provided many answers. Drawing from the cognitive load theory and literature on resilience, we developed and tested a research model hypothesising why people share fake news. We also tested the moderating role of social media resilience. We obtained data from 1068 social media users in Nigeria using a chain referral technique with an online questionnaire as the instrument for data collection. Our findings suggest that information overload and information strain strongly predict fake news sharing. Social overload and irrelevant information also contributed to fake news sharing behaviour. Furthermore, resilience moderated and weakened the effect of information strain, information overload, irrelevant information, and social overload on fake news sharing in such a way that this effect is more pronounced among those with low resilience. This indicates that those with low resilience tend to share fake news when confronted with much information on social media. The study concluded with some theoretical and practical implications.

Publisher

SAGE Publications

Subject

Development,Geography, Planning and Development

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