English

Persistent and Conversational Multi-Method Explainability for Trustworthy Financial AI

Artificial Intelligence 2026-05-13 v1

Abstract

Financial institutions increasingly require AI explanations that are persistent, cross-validated across methods, and conversationally accessible to human decision-makers. We present an architecture for human-centered explainable AI in financial sentiment analysis that combines three contributions. First, we treat XAI artifacts -- LIME feature attributions, occlusion-based word importance scores, and saliency heatmaps -- as persistent, searchable objects in distributed S3-compatible storage with structured metadata and natural-language summaries, enabling semantic retrieval over explanation history and automatic index reconstruction after system failures. Second, we enable multi-method explanation triangulation, where a retrieval-augmented generation (RAG) assistant compares and synthesizes results from multiple XAI methods applied to the same prediction, allowing users to assess explanation robustness through natural-language dialogue. Third, we evaluate the faithfulness of generated explanations using automated checks over grounding completeness, hallucinated claims, and method-attribution behavior. We demonstrate the architecture on an EXTRA-BRAIN financial sentiment analysis pipeline using FinBERT predictions and present evaluation results showing that constrained prompting reduces hallucination rate by 36\% and increases method-attribution citations by 73\% compared to naive prompting. We discuss implications for trustworthy, human-centered AI services in regulated financial environments.

Keywords

Cite

@article{arxiv.2605.11687,
  title  = {Persistent and Conversational Multi-Method Explainability for Trustworthy Financial AI},
  author = {Georgios Makridis and Georgios Fatouros and John Soldatos and George Katsis and Dimosthenis Kyriazis},
  journal= {arXiv preprint arXiv:2605.11687},
  year   = {2026}
}

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5 pages