Conversational AI increases political knowledge as effectively as self-directed internet search
September 05, 2025 Β· Declared Dead Β· π arXiv.org
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Authors
Lennart Luettgau, Hannah Rose Kirk, Kobi Hackenburg, Jessica Bergs, Henry Davidson, Henry Ogden, Divya Siddarth, Saffron Huang, Christopher Summerfield
arXiv ID
2509.05219
Category
cs.HC: Human-Computer Interaction
Citations
2
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Conversational AI systems are increasingly being used in place of traditional search engines to help users complete information-seeking tasks. This has raised concerns in the political domain, where biased or hallucinated outputs could misinform voters or distort public opinion. However, in spite of these concerns, the extent to which conversational AI is used for political information-seeking, as well the potential impact of this use on users' political knowledge, remains uncertain. Here, we address these questions: First, in a representative national survey of the UK public (N = 2,499), we find that in the week before the 2024 election as many as 32% of chatbot users - and 13% of eligible UK voters - have used conversational AI to seek political information relevant to their electoral choice. Second, in a series of randomised controlled trials (N = 2,858 total) we find that across issues, models, and prompting strategies, conversations with AI increase political knowledge (increase belief in true information and decrease belief in misinformation) to the same extent as self-directed internet search. Taken together, our results suggest that although people in the UK are increasingly turning to conversational AI for information about politics, this shift may not lead to increased public belief in political misinformation.
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