Ensemble Learning for Proactive Detection of Network-Intrusion-Based Insurance Fraud
- 1 Department of Computer and Electrical Engineering, University of Energy and Natural Resources, Sunyani, Ghana
- 2 Department of Computer Science and Informatics, University of Energy and Natural Resources, Sunyani, Ghana
- 3 Department of Computing and Information Sciences, Catholic University of Ghana - Sunyani-Fiapre, Ghana
- 4 Business and Technology College, Wilmington University, United States
- 5 Sawyer Business School, Suffolk University, United States
- 6 College of Engineering, Drexel University, United States
Abstract
We propose an ensemble learning pipeline that proactively integrates Stacking Feature Embedding (SFE) with Principal Component Analysis (PCA) and tree-based ensembles to proactively detect insurance fraud originating from network intrusions. The main contributions are: (1) the novel integration of SFE-PCA as a meta-feature construction step for tabular network flow data; (2) a sensitivity analysis that justifies PCA reduction ratios used for each dataset; and (3) a computational and ethical assessment for real-world deployment. Random Forest (RF), Extra Trees (ET), and XGBoost classifiers were trained and evaluated on benchmark intrusion datasets, specifically NSL-KDD, LYCOS-IDS2017, and CIC-IDS2018. Findings from experiments conducted on these datasets show that the proposed pipeline achieves high detection performance (AUC > 0.995) and 99.9% accuracy, while reducing feature dimensionality and resource use compared to deep baselines (CNN/LSTM). These results suggest the approach is an efficient, interpretable option for proactive intrusion-driven insurance fraud detection.
DOI: https://doi.org/10.3844/jcssp.2026.2156.2188
Copyright: © 2026 Benjamin Asubam Weyori, Selorm Kofi Tagbo, Abubakar Sadik Yakubu, Kenneth Kojo Bonsu, Moesha Noah and Eric Wiafe Appah. This is an open access article distributed under the terms of the
Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
- 19 Views
- 6 Downloads
- 0 Citations
Download
Keywords
- Insurance Fraud Detection
- Ensemble Learning
- Stacking Feature Embedding
- PCA
- Intrusion Detection
- AUC-ROC