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Article
Disinformation and misinformation triangle: a conceptual model for ‘fake news’ epidemic, causal factors and interventions
Journal of Documentation (2019)
  • Victoria L. Rubin
Abstract
Purpose (mandatory)
This position paper treats disinformation and misinformation (intentionally deceptive and unintentionally inaccurate misleading information, respectively) as a socio-cultural technology-enabled epidemic in digital news, propagated via social media.
Design/methodology/approach (mandatory)
The proposed Disinformation and Misinformation Triangle is a conceptual model that identifies the three minimal causal factors occurring simultaneously to facilitate the spread of the epidemic at the societal level.
Findings (mandatory)
Following the epidemiological Disease Triangle model, the three interacting causal factors are translated into the digital news context: (1) the virulent pathogens are falsifications, clickbait, satirical ‘fakes’ and other deceptive or misleading news content; (2) the susceptible hosts are information-overloaded, time-pressed news readers lacking media literacy skills; and (3) the conducive environments are polluted poorly-regulated social media platforms that propagate and encourage the spread of various ‘fakes’.
Originality/value (mandatory)
The three types of interventions – automation, education, and regulation – are proposed as a set of holistic measures to reveal, and potentially control, predict and prevent further proliferation of the epidemic. Partial automated solutions with natural language processing, machine learning and various automated detection techniques are currently available, as exemplified here briefly. Automated solutions assist (but not replace) human judgements about whether news is truthful and credible. Information literacy efforts require further in-depth understanding of the phenomenon and interdisciplinary collaboration outside of the traditional library and information science, incorporating media studies, journalism, interpersonal psychology and communication perspectives.
Keywords
  • Disinformation,
  • misinformation,
  • deception,
  • automated satire detection,
  • automated clickbait detection.,
  • fake news,
  • machine learning,
  • natural language processing,
  • NLP,
  • ML,
  • automated deception detection
Publication Date
2019
DOI
https://doi.org/10.1108/JD-12-2018-0209
Citation Information
Rubin, V. (2019), "Disinformation and misinformation triangle", Journal of Documentation, Vol. 75 No. 5, pp. 1013-1034. https://doi.org/10.1108/JD-12-2018-0209