Iterative cleaning and learning of big highly-imbalanced fraud data using unsupervised learning


연구 분야: Artificial Intelligence



학회: Journal of Big Data


초록

Fraud datasets often times lack consistent and accurate labels, and are characterized by having high class imbalance where the number of fraudulent examples are far fewer than those of normal ones. Machine learning designed for effectively detecting fraud is an important task since fraudulent behavior can have significant financial or health consequences, but is presented with significant challenges due to the class imbalance and availability of reliable labels. This paper presents an unsupervised fraud detection method that uses an iterative cleaning process for effective fraud detection. We measure our method performance using a newly created Medicare fraud big dataset and a widely used credit card fraud dataset. Additionally, we detail the process of creating the highly-imbalanced Medicare dataset from multiple publicly available sources, how additional trainable features were added, and how fraudulent labels were assigned for final model performance measurements. The results are compared with two popular unsupervised learners and show that our method outperforms both models in both datasets. Our work achieves a higher AUPRC with relatively few iterations across both domains.


Author Profile
Robert K. L. Kennedy

College of Engineering & Computer Science Florida Atlantic University 777 Glades Road Boca Raton FL 33431 USA

United States
Author Profile
Zahra Salekshahrezaee

College of Engineering & Computer Science Florida Atlantic University 777 Glades Road Boca Raton FL 33431 USA

United States
Author Profile
Flavio Villanustre

LexisNexis Business Information Solutions 245 Peachtree Center Avenue Atlanta GA 30303 USA

Gabon

📄 논문 정보

발행 연도 2023년
인용수 0
출판 국가 Gabon, United States
사이트 Springer
좋아요 수 0

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