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Main Authors: Mermigkis, Georgios, Metaxakis, Dimitris, Tyrovolas, Marios, Sofotasios, Argiris, Avgeris, Nikolaos, Hadjidoukas, Panagiotis, Stylios, Chrysostomos
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.12543
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author Mermigkis, Georgios
Metaxakis, Dimitris
Tyrovolas, Marios
Sofotasios, Argiris
Avgeris, Nikolaos
Hadjidoukas, Panagiotis
Stylios, Chrysostomos
author_facet Mermigkis, Georgios
Metaxakis, Dimitris
Tyrovolas, Marios
Sofotasios, Argiris
Avgeris, Nikolaos
Hadjidoukas, Panagiotis
Stylios, Chrysostomos
contents Large Language Models (LLMs) are increasingly used to translate the technical outputs of eXplainable Artificial Intelligence (XAI) methods into accessible natural-language explanations. However, existing approaches often lack guarantees of accuracy, faithfulness, and completeness. At the same time, current efforts to evaluate such narratives remain largely subjective or confined to post-hoc scoring, offering no safeguards to prevent flawed explanations from reaching end-users. To address these limitations, this paper proposes a Two-Stage LLM Meta-Verification Framework that consists of (i) an Explainer LLM that converts raw XAI outputs into natural-language narratives, (ii) a Verifier LLM that assesses them in terms of faithfulness, coherence, completeness, and hallucination risk, and (iii) an iterative refeed mechanism that uses the Verifier's feedback to refine and improve them. Experiments across five XAI techniques and datasets, using three families of open-weight LLMs, show that verification is crucial for filtering unreliable explanations while improving linguistic accessibility compared with raw XAI outputs. In addition, the analysis of the Entropy Production Rate (EPR) during the refinement process indicates that the Verifier's feedback progressively guides the Explainer toward more stable and coherent reasoning. Overall, the proposed framework provides an efficient pathway toward more trustworthy and democratized XAI systems.
format Preprint
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Two-Stage LLM Framework for Accessible and Verified XAI Explanations
Mermigkis, Georgios
Metaxakis, Dimitris
Tyrovolas, Marios
Sofotasios, Argiris
Avgeris, Nikolaos
Hadjidoukas, Panagiotis
Stylios, Chrysostomos
Artificial Intelligence
Large Language Models (LLMs) are increasingly used to translate the technical outputs of eXplainable Artificial Intelligence (XAI) methods into accessible natural-language explanations. However, existing approaches often lack guarantees of accuracy, faithfulness, and completeness. At the same time, current efforts to evaluate such narratives remain largely subjective or confined to post-hoc scoring, offering no safeguards to prevent flawed explanations from reaching end-users. To address these limitations, this paper proposes a Two-Stage LLM Meta-Verification Framework that consists of (i) an Explainer LLM that converts raw XAI outputs into natural-language narratives, (ii) a Verifier LLM that assesses them in terms of faithfulness, coherence, completeness, and hallucination risk, and (iii) an iterative refeed mechanism that uses the Verifier's feedback to refine and improve them. Experiments across five XAI techniques and datasets, using three families of open-weight LLMs, show that verification is crucial for filtering unreliable explanations while improving linguistic accessibility compared with raw XAI outputs. In addition, the analysis of the Entropy Production Rate (EPR) during the refinement process indicates that the Verifier's feedback progressively guides the Explainer toward more stable and coherent reasoning. Overall, the proposed framework provides an efficient pathway toward more trustworthy and democratized XAI systems.
title A Two-Stage LLM Framework for Accessible and Verified XAI Explanations
topic Artificial Intelligence
url https://arxiv.org/abs/2604.12543