2024
DOI: 10.32388/1amker
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Creating a Biomedical Knowledge Base by Addressing GPT's Inaccurate Responses and Benchmarking Context

S. Solomon Darnell,
Rupert W. Overall,
Andrea Guarracino
et al.

Abstract: We created GNQA, a generative pre-trained transformer (GPT) knowledge base driven by a performant retrieval augmented generation (RAG) with a focus on aging, dementia, Alzheimer’s and diabetes. We uploaded a corpus of three thousand peer reviewed publications on these topics into the RAG. To address concerns about inaccurate responses and GPT ‘hallucinations’, we implemented a context provenance tracking mechanism that enables researchers to validate responses against the original material and to get reference… Show more

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