AI argumentative feedback on community notes produces larger quality improvements than supportive or neutral feedback in a hybrid moderation experiment.
"Liar, Liar Pants on Fire": A New Benchmark Dataset for Fake News Detection
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Automatic fake news detection is a challenging problem in deception detection, and it has tremendous real-world political and social impacts. However, statistical approaches to combating fake news has been dramatically limited by the lack of labeled benchmark datasets. In this paper, we present liar: a new, publicly available dataset for fake news detection. We collected a decade-long, 12.8K manually labeled short statements in various contexts from PolitiFact.com, which provides detailed analysis report and links to source documents for each case. This dataset can be used for fact-checking research as well. Notably, this new dataset is an order of magnitude larger than previously largest public fake news datasets of similar type. Empirically, we investigate automatic fake news detection based on surface-level linguistic patterns. We have designed a novel, hybrid convolutional neural network to integrate meta-data with text. We show that this hybrid approach can improve a text-only deep learning model.
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cs.CY 1years
2025 1verdicts
UNVERDICTED 1representative citing papers
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AI Feedback Enhances Community-Based Content Moderation through Engagement with Counterarguments
AI argumentative feedback on community notes produces larger quality improvements than supportive or neutral feedback in a hybrid moderation experiment.