Detecting Fraud, Waste, and Abuse in Healthcare Claims using AI: Applying Isolation Forest to Claim Analytics
Naren Chandra1*, Vineel Arekapudi2
1University of The Cumberlands, Acton, USA
2Blue Cross Blue Shield, Atlanta, USA
* Corresponding author: naren1712@gmail.com
Presented at the International Conference on Open Finance (ICOF2025), Springfield, USA, Aug 28, 2025
SETSCI Conference Proceedings, 2025, 24, Page (s): 23-29 , https://doi.org/10.36287/setsci.24.3.023
Published Date: 08 September 2025
Healthcare fraud, waste, and abuse (FWA) are among the most significant drivers of financial inefficiency in healthcare systems worldwide, with estimates suggesting they contribute to as much as 10% of total healthcare expenditures. In the United States, these losses are estimated to exceed $300 billion annually. This paper presents a machine learning approach using Isolation Forest, an unsupervised anomaly detection algorithm, to proactively identify potential FWA in healthcare claims data. Based on real-world patterns, a synthetically generated dataset was created to simulate both legitimate and fraudulent billing behavior. The model achieved high performance with a precision of 0.81, recall of 0.82, F1 score of 0.81, and ROC-AUC of 0.90. Through case studies and comparison of performance with baseline models, we demonstrate the practical applicability of this approach in real-time fraud monitoring. The study also discusses key implementation considerations, including ethical and regulatory factors, explainability, and system integration. We argue that intelligent anomaly detection models can be integrated with payer systems to improve financial stability and healthcare affordability.
Keywords - Healthcare Fraud Detection, FWA, Machine Learning, Anomaly Detection, Explainable AI, Isolation Forest, Claims Analysis
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