Humans cannot reliably distinguish LLM-generated news from human-written news across multiple models, with domain expertise providing only modest help and fatigue reducing accuracy over time.
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RAMM improves multimodal fake news detection by retrieving abstract narrative consistencies across instances and shifting to analogical reasoning via an MLLM backbone and two alignment modules.
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Can Humans Tell? A Dual-Axis Study of Human Perception of LLM-Generated News
Humans cannot reliably distinguish LLM-generated news from human-written news across multiple models, with domain expertise providing only modest help and fatigue reducing accuracy over time.
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Retrieval-Augmented Multimodal Model for Fake News Detection
RAMM improves multimodal fake news detection by retrieving abstract narrative consistencies across instances and shifting to analogical reasoning via an MLLM backbone and two alignment modules.