Answer Bubbles: Information Exposure in AI-Mediated Search
arXiv cs.CL / 3/18/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- Generative search systems exhibit source-selection biases in citations, favoring certain sources over others across vanilla GPT, Search GPT, Google AI Overviews, and traditional Google Search.
- Incorporating search attenuates hedging in epistemic language by up to 60% while preserving confidence language in AI-generated summaries.
- AI-generated summaries further amplify citation biases, disproportionately overrepresenting Wikipedia and longer sources while underrepresenting cited social media content and negatively framed sources.
- The study highlights the potential for 'answer bubbles' where identical queries yield different information realities across systems, with implications for user trust and transparency of AI-mediated information access.
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