1 Department of Business Administration, University of Arkansas, Fayetteville.
2 Department of Information Systems, University of Arkansas, Fayetteville.
World Journal of Advanced Research and Reviews, 2026, 29(02), 1345-1354
Article DOI: 10.30574/wjarr.2026.29.2.0397
Received on 13 January 2026; revised on 21 February 2026; accepted on 24 February 2026
Fraud detection is a critical challenge across public and private financial systems due to increasing transaction volumes, evolving adversarial behavior, and strict regulatory constraints. While machine learning has significantly improved fraud detection performance, existing research largely focuses on single-sector applications, limiting its effectiveness in addressing cross-sector fraud patterns. This paper presents a comprehensive review of machine learning models for fraud detection in multi-sector financial systems, covering banking, insurance, and public-sector domains. We examine supervised, unsupervised, semi-supervised, deep learning, and graph-based approaches, highlighting their strengths and limitations in real-world settings. In addition, we analyze key challenges related to data imbalance, label uncertainty, evaluation metrics, scalability, privacy, and explainability. Finally, the paper identifies open research directions, including cross-sector generalization, privacy-preserving collaboration, scalable graph learning, and continual adaptation to evolving fraud strategies. This review provides a structured reference for researchers and practitioners seeking to design effective, responsible, and scalable fraud detection systems.
Fraud Detection; Machine Learning; Multi-Sector Financial Systems; Graph-Based Learning; Privacy-Preserving Analytics
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Daniel Tom Agara, Samuel Sunday Omotoso and Oluwatosin Junior Alabi. Machine Learning Models for Multi Sector Fraud Detection in Public and Private Financial Systems. World Journal of Advanced Research and Reviews, 2026, 29(2), 1345-1354. Article DOI: https://doi.org/10.30574/wjarr.2026.29.2.0397