2022
DOI: 10.3390/app12105045
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Methodological Aspects in Study of Fat Stigma in Social Media Contexts: A Systematic Literature Review

Abstract: With increased obesity rates worldwide and the rising popularity in social media usage, we have witnessed a growth in hate speech towards fat/obese people. The severity of hate content has prompted researchers to study public perceptions that give rise to fat stigma from social media discourses. This article presents a systematic literature review of recent literature published in this domain to gauge the current state of research and identify possible research gaps. We have examined existing research (i.e., p… Show more

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Cited by 2 publications
(6 citation statements)
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“…Methods associated with fat stigma studies on social media discourses were systematically reviewed by Wanniarachchi et al (2022). The review ascertained that textual data analysis in most studies was done mainly using manual qualitative coding approaches, although, few studies have used sentiment analysis, topic modelling and emotion analysis too.…”
Section: Detecting Obesity Content In Social Mediamentioning
confidence: 99%
See 4 more Smart Citations
“…Methods associated with fat stigma studies on social media discourses were systematically reviewed by Wanniarachchi et al (2022). The review ascertained that textual data analysis in most studies was done mainly using manual qualitative coding approaches, although, few studies have used sentiment analysis, topic modelling and emotion analysis too.…”
Section: Detecting Obesity Content In Social Mediamentioning
confidence: 99%
“…Discourse analysis can enable social scientists to recognize emergent stigma patterns present in the given social context. Moreover, prior studies have mostly considered Twitter as their single data source (Wanniarachchi et al, 2022); but, with the text-limit constraints imposed on tweets, users have to adapt their intended message within the specified data bounds. We propose that by combining data from multiple social media platforms, we can inspect richer content.…”
Section: Detecting Obesity Content In Social Mediamentioning
confidence: 99%
See 3 more Smart Citations