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Main Author: Aghaebrahimian, Ahmad
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.03634
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author Aghaebrahimian, Ahmad
author_facet Aghaebrahimian, Ahmad
contents Large Language Models have significantly advanced natural language processing tasks, but remain prone to generating incorrect or misleading but plausible arguments. This issue, known as hallucination, is particularly concerning in high-stakes domains like clinical applications, where factual inaccuracies can have severe consequences. Existing evaluation metrics fail to adequately assess factual consistency and lack interpretability, making diagnosing and mitigating errors difficult. We propose an interpretable framework for factual consistency assessment for in-domain and open-domain texts to address these limitations. Our approach decomposes text into atomic facts and introduces a flexible, schema-free methodology. Unlike previous methods with an absolute metric, we incorporate a weighted metric to enhance factual evaluation. Additionally, we propose a mechanism to control assessment complexity in intricate domains. We benchmark our approach on popular general and clinical datasets and release our code to support fact-aware model training in future research.
format Preprint
id arxiv_https___arxiv_org_abs_2512_03634
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AlignCheck: a Semantic Open-Domain Metric for Factual Consistency Assessment
Aghaebrahimian, Ahmad
Computation and Language
Artificial Intelligence
Large Language Models have significantly advanced natural language processing tasks, but remain prone to generating incorrect or misleading but plausible arguments. This issue, known as hallucination, is particularly concerning in high-stakes domains like clinical applications, where factual inaccuracies can have severe consequences. Existing evaluation metrics fail to adequately assess factual consistency and lack interpretability, making diagnosing and mitigating errors difficult. We propose an interpretable framework for factual consistency assessment for in-domain and open-domain texts to address these limitations. Our approach decomposes text into atomic facts and introduces a flexible, schema-free methodology. Unlike previous methods with an absolute metric, we incorporate a weighted metric to enhance factual evaluation. Additionally, we propose a mechanism to control assessment complexity in intricate domains. We benchmark our approach on popular general and clinical datasets and release our code to support fact-aware model training in future research.
title AlignCheck: a Semantic Open-Domain Metric for Factual Consistency Assessment
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2512.03634