Fake news: uma revisão compreensiva e interdisciplinar
DOI:
https://doi.org/10.14571/brajets.v14.n3.502-520Resumo
Criar notícias falsas com o objetivo de manipular alguém ou um grupo de pessoas, historicamente não é algo recente. Porém, nos últimos anos, a criação de notícias falsas, ou mundialmente conhecidas como fake news, tem se intensificado e sua propagação tem sido cada vez mais acelerada. O nível de complexidade em detectar essas fake news tem aumentado significativamente com as deepfakes e chamado a atenção da comunidade científica, pois é um tópico de pesquisa relevante, dado os seus impactos na sociedade global. Este trabalho, até o momento, é o primeiro em Português, de revisão de literatura de caráter interdisciplinar que envolve fake news e as deepfakes, seus conceitos, classificações, formas de propagação e as suas relações em diversas áreas do conhecimento. Os resultados mostram que a solução definitiva está longe de ser alcançada e ainda há muito por se fazer em busca do fim ou da minimização dos impactos causados pelas fake news e deepfakes na sociedade como um todo.Referências
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