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Main Authors: Till, Demian, Smeaton, John, Haubrick, Peter, Saheb, Gouse, Graef, Florian, Berman, David
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.19507
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author Till, Demian
Smeaton, John
Haubrick, Peter
Saheb, Gouse
Graef, Florian
Berman, David
author_facet Till, Demian
Smeaton, John
Haubrick, Peter
Saheb, Gouse
Graef, Florian
Berman, David
contents Recent work has demonstrated state-of-the-art results in large language model (LLM) hallucination detection and mitigation through consistency-based approaches which involve aggregating multiple responses sampled from a single LLM for a given prompt. These approaches help offset limitations stemming from the imperfect data on which LLMs are trained, which includes biases and under-representation of information required at deployment time among other limitations which can lead to hallucinations. We show that extending these single-model consistency methods to combine responses from multiple LLMs with different training data, training schemes and model architectures can result in substantial further improvements in hallucination detection and mitigation capabilities beyond their single-model consistency counterparts. We evaluate this "consortium consistency" approach across many model teams from a pool of 15 LLMs and explore under what conditions it is beneficial to team together different LLMs in this manner. Further, we show that these performance improvements often come with reduced inference costs, offsetting a significant drawback with single-model consistency methods.
format Preprint
id arxiv_https___arxiv_org_abs_2510_19507
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Teaming LLMs to Detect and Mitigate Hallucinations
Till, Demian
Smeaton, John
Haubrick, Peter
Saheb, Gouse
Graef, Florian
Berman, David
Machine Learning
Recent work has demonstrated state-of-the-art results in large language model (LLM) hallucination detection and mitigation through consistency-based approaches which involve aggregating multiple responses sampled from a single LLM for a given prompt. These approaches help offset limitations stemming from the imperfect data on which LLMs are trained, which includes biases and under-representation of information required at deployment time among other limitations which can lead to hallucinations. We show that extending these single-model consistency methods to combine responses from multiple LLMs with different training data, training schemes and model architectures can result in substantial further improvements in hallucination detection and mitigation capabilities beyond their single-model consistency counterparts. We evaluate this "consortium consistency" approach across many model teams from a pool of 15 LLMs and explore under what conditions it is beneficial to team together different LLMs in this manner. Further, we show that these performance improvements often come with reduced inference costs, offsetting a significant drawback with single-model consistency methods.
title Teaming LLMs to Detect and Mitigate Hallucinations
topic Machine Learning
url https://arxiv.org/abs/2510.19507