QUANT-PHLGAug 16, 2022

Mixed Quantum-Classical Method For Fraud Detection with Quantum Feature Selection

arXiv:2208.07963v198 citationsh-index: 83
Originality Synthesis-oriented
AI Analysis

This is an incremental application of quantum machine learning to a domain-specific problem in finance, with limited hardware constraints.

The paper tackled fraud detection in financial payments by applying a quantum support vector machine (QSVM) with quantum feature selection, resulting in improved accuracy for a mixed quantum-classical method on a reduced dataset.

This paper presents a first end-to-end application of a Quantum Support Vector Machine (QSVM) algorithm for a classification problem in the financial payment industry using the IBM Safer Payments and IBM Quantum Computers via the Qiskit software stack. Based on real card payment data, a thorough comparison is performed to assess the complementary impact brought in by the current state-of-the-art Quantum Machine Learning algorithms with respect to the Classical Approach. A new method to search for best features is explored using the Quantum Support Vector Machine's feature map characteristics. The results are compared using fraud specific key performance indicators: Accuracy, Recall, and False Positive Rate, extracted from analyses based on human expertise (rule decisions), classical machine learning algorithms (Random Forest, XGBoost) and quantum based machine learning algorithms using QSVM. In addition, a hybrid classical-quantum approach is explored by using an ensemble model that combines classical and quantum algorithms to better improve the fraud prevention decision. We found, as expected, that the results highly depend on feature selections and algorithms that are used to select them. The QSVM provides a complementary exploration of the feature space which led to an improved accuracy of the mixed quantum-classical method for fraud detection, on a drastically reduced data set to fit current state of Quantum Hardware.

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