Overreliance on AI in Information-seeking from Video Content
arXiv cs.CL / 3/23/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper investigates how generative AI and LLMs used as intermediaries in video-based information retrieval affect accuracy, efficiency, and user confidence across 900 participants and 8,000+ tasks.
- AI assistance increases accuracy by 3-7% when users view the relevant video segment and by 27-35% when they do not, and boosts efficiency by about 10% for short videos and 25% for longer ones.
- Despite improvements, users over-relied on AI outputs, causing up to 32% accuracy drops when faced with a deceiving AI assistant, while self-reported confidence remained stable.
- The results reveal fundamental safety risks in AI-mediated video information retrieval and highlight the need for safeguards to mitigate misinformation and over-reliance.
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