Model-agnostic explainable artificial intelligence methods in finance: a systematic review, recent developments, limitations, challenges and future directions

The increasing integration of Artificial Intelligence (AI) and Machine Learning (ML)—algorithms that enable computers to identify patterns from data—in financial applications has significantly improved predictive capabilities in areas such as credit scoring, fraud detection, portfolio management, an...

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Published inThe Artificial intelligence review Vol. 58; no. 8; p. 232
Main Authors Khan, Farhina Sardar, Mazhar, Syed Shahid, Mazhar, Kashif, A. AlSaleh, Dhoha, Mazhar, Amir
Format Journal Article
LanguageEnglish
Published Dordrecht Springer Netherlands 03.05.2025
Springer Nature B.V
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ISSN1573-7462
0269-2821
1573-7462
DOI10.1007/s10462-025-11215-9

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Summary:The increasing integration of Artificial Intelligence (AI) and Machine Learning (ML)—algorithms that enable computers to identify patterns from data—in financial applications has significantly improved predictive capabilities in areas such as credit scoring, fraud detection, portfolio management, and risk assessment. Despite these advancements, the opaque, “black box” nature of many AI and ML models raises critical concerns related to transparency, trust, and regulatory compliance. Explainable Artificial Intelligence (XAI) aims to address these issues by providing interpretable and transparent decision-making processes. This study systematically reviews Model-Agnostic Explainable AI techniques, which can be applied across different types of ML models in finance, to evaluate their effectiveness, scalability, and practical applicability. Through analysis of 150 peer-reviewed studies, the paper identifies key challenges, such as balancing interpretability with predictive accuracy, managing computational complexity, and meeting regulatory requirements. The review highlights emerging trends toward hybrid models that combine powerful ML algorithms with interpretability techniques, real-time explanations suitable for dynamic financial markets, and XAI frameworks explicitly designed to align with regulatory standards. The study concludes by outlining specific future research directions, including the development of computationally efficient explainability methods, regulatory-compliant frameworks, and ethical AI solutions to ensure transparent and accountable financial decision-making.
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ISSN:1573-7462
0269-2821
1573-7462
DOI:10.1007/s10462-025-11215-9