Toward Practical Quantum Machine Learning: A Novel Hybrid Quantum LSTM for Fraud Detection
Journal:
arXiv
Published Date:
Apr 30, 2025
Abstract
We present a novel hybrid quantum-classical neural network architecture for
fraud detection that integrates a classical Long Short-Term Memory (LSTM)
network with a variational quantum circuit. By leveraging quantum phenomena
such as superposition and entanglement, our model enhances the feature
representation of sequential transaction data, capturing complex non-linear
patterns that are challenging for purely classical models. A comprehensive data
preprocessing pipeline is employed to clean, encode, balance, and normalize a
credit card fraud dataset, ensuring a fair comparison with baseline models.
Notably, our hybrid approach achieves per-epoch training times in the range of
45-65 seconds, which is significantly faster than similar architectures
reported in the literature, where training typically requires several minutes
per epoch. Both classical and quantum gradients are jointly optimized via a
unified backpropagation procedure employing the parameter-shift rule for the
quantum parameters. Experimental evaluations demonstrate competitive
improvements in accuracy, precision, recall, and F1 score relative to a
conventional LSTM baseline. These results underscore the promise of hybrid
quantum-classical techniques in advancing the efficiency and performance of
fraud detection systems.
Keywords: Hybrid Quantum-Classical Neural Networks, Quantum Computing, Fraud
Detection, Hybrid Quantum LSTM, Variational Quantum Circuit, Parameter-Shift
Rule, Financial Risk Analysis