FiD-QAE: A Fidelity-Driven Quantum Autoencoder for Credit Card Fraud Detection
Mansour El Alami, Adam Innan, Nouhaila Innan, Muhammad Shafique, and Mohamed Bennai

TL;DR
FiD-QAE introduces a quantum autoencoder that uses fidelity estimation for anomaly detection in credit card fraud, demonstrating robustness and feasibility on real quantum hardware.
Contribution
This work presents the first fidelity-based quantum autoencoder for fraud detection, combining quantum state encoding, variational compression, and fidelity evaluation.
Findings
Maintains performance across class imbalance levels
Robust under quantum noise models
Feasible on IBM Quantum hardware
Abstract
Credit card fraud detection is a critical task in financial security, as fraudulent transactions are rare, highly imbalanced, and often resemble legitimate ones. A wide range of classical machine learning methods, as well as more recent quantum machine learning approaches, have been investigated to address this challenge, each providing valuable progress but also leaving open questions regarding scalability, robustness, and adaptability to evolving fraud patterns. In this work, we introduce the Fidelity-based Quantum Autoencoder (FiD-QAE), a quantum architecture that employs fidelity estimation as the decision criterion for anomaly detection. Transactions are encoded into quantum states, compressed through a variational quantum circuit, and evaluated using the SWAP test to distinguish legitimate from fraudulent transactions. We conduct a comprehensive evaluation of FiD-QAE, including…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Imbalanced Data Classification Techniques · Quantum Information and Cryptography
