ProfileXAI is a model- and domain-agnostic framework that couples post-hoc explainers (SHAP, LIME, Anchor) with retrieval - augmented LLMs to produce explanations for different types of users. The system indexes a multimodal knowledge base, selects an explainer per instance via quantitative criteria, and generates grounded narratives with chat-enabled prompting. On Heart Disease and Thyroid Cancer datasets, we evaluate fidelity, robustness, parsimony, token use, and perceived quality. No explainer dominates: LIME achieves the best fidelity-robustness trade-off (Infidelity ≤0.30, L<0.7 on Heart Disease); Anchor yields the sparsest, low-token rules; SHAP attains the highest satisfaction (xˉ=4.1). Profile conditioning stabilizes tokens (σ≤13%) and maintains positive ratings across profiles (xˉ≥3.7, with domain experts at 3.77), enabling efficient and trustworthy explanations.
@article{arxiv.2510.22998,
title = {ProfileXAI: User-Adaptive Explainable AI},
author = {Gilber A. Corrales and Carlos Andrés Ferro Sánchez and Reinel Tabares-Soto and Jesús Alfonso López Sotelo and Gonzalo A. Ruz and Johan Sebastian Piña Durán},
journal= {arXiv preprint arXiv:2510.22998},
year = {2025}
}
Comments
pages, 1 figure, 3 tables. Preprint. Evaluated on UCI Heart Disease (1989) and UCI Differentiated Thyroid Cancer Recurrence (2023). Uses IEEEtran