This paper presents the capacity of ensemble learning methods to identify credit card frauds on two distinct data sets: the Sparkov synthetic data set and the real data s...
Abstract:
Recognizing fraudulent credit card transactions is one of the main issues facing banking institutions. Since each transaction that completes the authentication procedure ...Show MoreMetadata
Abstract:
Recognizing fraudulent credit card transactions is one of the main issues facing banking institutions. Since each transaction that completes the authentication procedure must be authorized by financial institutions, a hacker might pose as the actual cardholder and execute a fraudulent transaction. In this paper, we investigated the capacity of ensemble learning methods to identify credit card frauds on two distinct data sets: the Sparkov synthetic dataset and the real dataset of consumers in the European Union. XGBoost models, random forests, and naive Bayes classifiers are applied and assessed on both datasets. Accuracy, precision, recall, and F1 score are used to measure performance. According to the results, most ensemble classifiers perform exceptionally well on the real-world dataset, but significantly poorly on the simulated dataset. This study showed that, unlike in simulated environments, credit card transaction management scripts are quickly learned in deterministic settings. It is discussed that a larger danger of card information leakage results from strict determinism and lack of randomness.
This paper presents the capacity of ensemble learning methods to identify credit card frauds on two distinct data sets: the Sparkov synthetic data set and the real data s...
Published in: IEEE Access ( Volume: 12)