AI model OpenScholar synthesizes scientific research and cites sources as accurately as human experts [View all]
https://phys.org/news/2026-02-ai-openscholar-scientific-cites-sources.html
University of Washington
This looks really interesting.
Keeping up with the latest research is vital for scientists, but given that millions of scientific papers are published every year, that can prove difficult. Artificial intelligence systems show promise for quickly synthesizing seas of information, but they still tend to make things up, or "hallucinate."
For instance, when a team led by researchers at the University of Washington and The Allen Institute for AI, or Ai2, studied a recent OpenAI model, GPT-4o, they found it fabricated 78-90% of its research citations. And general-purpose AI models like ChatGPT often can't access papers that were published after their training data was collected.
So the UW and Ai2 research team built OpenScholar, an open-source AI model designed specifically to synthesize current scientific research. The team also created the first large, multi-domain benchmark for evaluating how well models can synthesize and cite scientific research. In tests, OpenScholar cited sources as accurately as human experts, and 16 scientists preferred its response to those written by subject experts 51% of the time.
The team published its findings in Nature.
The project's code, data and a demo are publicly available and free to use.
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