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Detecting conspiracy theories on social media : improving machine learning to detect and understand online conspiracy theories / William Marcellino, Todd C. Helmus, Joshua Kerrigan, Hilary Reininger, Rouslan I. Karimov, Rebecca Ann Lawrence.

RAND Reports Available online

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Format:
Book
Author/Creator:
Marcellino, William, author.
Helmus, Todd C., author.
Contributor:
Kerrigan, Joshua.
International Security and Defense Policy Center.
Google (Firm)
Rand Corporation.
Language:
English
Subjects (All):
Communication in politics--Technological innovations--United States.
Communication in politics.
Conspiracy theories--Political aspects--United States.
Conspiracy theories.
Conspiracy theories--United States--Psychological aspects.
Machine learning--Technological innovations.
Machine learning.
Social media--Political aspects--United States.
Social media.
Other Title:
Detecting Conspiracy Theories on Social Media
Place of Publication:
Santa Monica, Calif. RAND Corporation 2021
Summary:
Conspiracy theories circulated online via social media contribute to a shift in public discourse away from facts and analysis and can contribute to direct public harm. Social media platforms face a difficult technical and policy challenge in trying to mitigate harm from online conspiracy theory language. As part of Google's Jigsaw unit's effort to confront emerging threats and incubate new technology to help create a safer world, RAND researchers conducted a modeling effort to improve machine-learning (ML) technology for detecting conspiracy theory language. They developed a hybrid model using linguistic and rhetorical theory to boost performance. They also aimed to synthesize existing research on conspiracy theories using new insight from this improved modeling effort. This report describes the results of that effort and offers recommendations to counter the effects of conspiracy theories that are spread online.
Contents:
Introduction: Detecting and Understanding Online Conspiracy Language
Making Sense of Conspiracy Theories
Modeling Conspiracy Theories: A Hybrid Approach
Conclusion and Recommendations
Appendix A: Data and Methodology
Appendix B: Stance: Text Analysis and Machine Learning.

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