How Google Autocomplete Algorithms about Conspiracy Theorists Mislead the Public

@article{AlRawi2022HowGA,
  title={How Google Autocomplete Algorithms about Conspiracy Theorists Mislead the Public},
  author={Ahmed Al-Rawi and Carmen Celestini and Nicole K. Stewart and Nathan Worku},
  journal={M/C Journal},
  year={2022},
  url={https://api.semanticscholar.org/CorpusID:247603535}
}
R reverse engineering is used to understand the nature of these algorithms in relation to the descriptive outcome, to illustrate how autocomplete subtitles label conspiracists in three countries and argue that these subtitles are problematic because they can mislead the public and amplify extremist views.
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