Published
Advancing Explainable AI for AI-Driven Security and Compliance in Financial Transactions
Published in October-December 2024 (Vol. 1, Issue 1, 2024)

Keywords
explainable AIXAIfinancial servicesAI interpretabilityalgorithmic transparencyanti-money launderingmachine learning in financeAI-driven securitycompliance platformfinancial transaction monitoringfeature attributionpost-hoc explanation methodsmodel-specific interpretationAI decision uncertaintydata analytic documentationlanguage models for explanationinterdisciplinary AI researchregulatory complianceEuropean Union AI regulationstransparent AI systemsfraud detectionAI in financial regulation
Abstract
Explainable AI (XAI) has been delivering ground-breaking results in various domains. Emerging in parallel with the rise of powerful machine learning models, how to extend explainability to those black-box systems and promote its integrality have evolved into a blooming research field. Financial services are among the first to highlight the requirement for interpretable and fair algorithms, and the European Union has established the minimum regulatory and supervisory expectations for taking Transparency and Explainability of AI into national law. And XAI seems to be an inevitable future trend in anti-money laundering detection due to the booming applications of machine learning techniques.
Thereat, a novel and all-round XAI-Prompted AI-Driven Security and Compliance Platform for Financial Transactions is proposed, providing AI decision uncertainty and traces, disclosing feature attributions, and automatically generating data analytic compliance documentation. A comprehensive comparison of manifold interpretation methods is also conducted to yield salient results, suggesting that a model-specific and post-hoc algorithm can prominently outperform others in this special financial domain. Moreover, adopting the innovative language model to automatically generate explanations of the prediction target is also explored successfully. Fargo is an interdisciplinary team, composed of researchers across computer science, machine learning, natural language processing, and financial regulation. They communicate and cooperate to make Fargo transparent and clearly documented its model, data, techniques, methodology and results. They receive a financial transaction that is not classified as suspicious or unusual.
Authors (1)
Phanish Lakkarasu
Sr Site Reliability EngineerSr Site Reliability EngineerSr Site Reliability EngineerSr Site Reliability Engineer
View all publications →Download Article
Best for printing and citation
File size: 0.0 MB
Format: PDF
Article Information
Published in:
October-December 2024 (Vol. 1, Issue 1, 2024)- Article ID:
- jaibdd110019
- Paper ID:
- JAIBDD-01-000019
- Published Date:
- 2026-02-24
Article Impact
Views:5,256
Downloads:2,325
scite_
Smart Citations
0Citing Publications
0Supporting
0Mentioning
0Contrasting
View Citations
See how this article has been cited at scite.ai
scite shows how a scientific paper has been cited by providing the context of the citation, a classification describing whether it supports, mentions, or contrasts the cited claim, and a label indicating in which section the citation was made.
scite shows how a scientific paper has been cited by providing the context of the citation, a classification describing whether it supports, mentions, or contrasts the cited claim, and a label indicating in which section the citation was made.
How to Cite
Lakkarasu (2026). Advancing Explainable AI for AI-Driven Security and Compliance in Financial Transactions. Journal of Artificial Intelligence and Big Data Disciplines (JAIBDD), 1(1), xx-xx. DOI:https://doi.org/10.70179/784ef287
Article Actions
More from this Issue
Revolutionizing Patient Outcomes: The Role of Generative AI and Machine Learning in Predictive Analytics for Healthcare
Valiki DileepRead more →

