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arxiv: 2410.02825 · v2 · pith:2XBEGEML · submitted 2024-09-30 · cs.CL · cs.CR

Ingest-And-Ground: Dispelling Hallucinations from Continually-Pretrained LLMs with RAG

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classification cs.CL cs.CR
keywords basemodelapproachaugmentcomparedcontinuallycontinually-pretraineddemonstrate
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This paper presents new methods that have the potential to improve privacy process efficiency with LLM and RAG. To reduce hallucination, we continually pre-train the base LLM model with a privacy-specific knowledge base and then augment it with a semantic RAG layer. Our evaluations demonstrate that this approach enhances the model performance (as much as doubled metrics compared to out-of-box LLM) in handling privacy-related queries, by grounding responses with factual information which reduces inaccuracies.

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  1. Reducing Hallucination in Enterprise AI Workflows via Hybrid Utility Minimum Bayes Risk (HUMBR)

    cs.LG 2026-04 unverdicted novelty 4.0

    HUMBR reduces LLM hallucinations in enterprise workflows by using a hybrid semantic-lexical utility within minimum Bayes risk decoding to identify consensus outputs, with derived error bounds and reported outperforman...