Comparative Performance Analysis of Quantum Machine Learning Architectures for Credit Card Fraud Detection
Mansour El Alami, Nouhaila Innan, Muhammad Shafique, and Mohamed Bennai

TL;DR
This paper evaluates various quantum machine learning architectures for credit card fraud detection, demonstrating that model configuration significantly impacts performance and robustness, with the Variational Quantum Classifier showing the best results.
Contribution
It provides a comparative analysis of different quantum classifiers and configurations, highlighting their performance patterns and robustness in financial fraud detection tasks.
Findings
VQC achieves an F1-score of 0.88
Model configurations significantly affect performance
Best models maintain robustness under quantum noise
Abstract
As financial fraud becomes increasingly complex, effective detection methods are essential. Quantum Machine Learning (QML) introduces certain capabilities that may enhance both accuracy and efficiency in this area. This study examines how different quantum feature maps and ansatz configurations affect the performance of three QML-based classifiers, the Variational Quantum Classifier (VQC), the Sampler Quantum Neural Network (SQNN), and the Estimator Quantum Neural Network (EQNN), when applied to two non-normalized financial fraud datasets. Different quantum feature map and ansatz configurations are evaluated, revealing distinct performance patterns. The VQC consistently demonstrates strong classification results, achieving an F1-score of 0.88, while the SQNN also delivers promising outcomes. In contrast, the EQNN struggles to produce robust results, emphasizing the challenges presented…
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