Parametric Quantum Feature Selection Methods for Fraud and Default Detection

Authors

  • Sutapa Samanta American Express
  • Dagen Wang American Express
  • Todd Hodges American Express
  • Andras Ferenczi American Express

DOI:

https://doi.org/10.1609/aaaiss.v7i1.36910

Abstract

Feature selection plays an important role in improving the efficiency of machine learning models for credit card fraud and default detection. We formulate the feature selection problem as a Quadratic Unconstrained Binary Optimization (QUBO) problem, which we solve using quantum annealers. We propose three new formulations based on this framework that improve the efficiency and flexibility of machine learning models. We benchmark the proposed methods, existing approaches from the literature, and also compare with classical feature-selection methods such as Random Forest feature importance and a combination of mutual information and Spearman correlation. Extensive experiments show that feature selection using quantum computers consistently performs better than the classical methods. Our experiments show the promise of using quantum computers in machine learning tasks in financial risk assessment applications.

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Published

2025-11-23

How to Cite

Samanta, S., Wang, D., Hodges, T., & Ferenczi, A. (2025). Parametric Quantum Feature Selection Methods for Fraud and Default Detection. Proceedings of the AAAI Symposium Series, 7(1), 390-397. https://doi.org/10.1609/aaaiss.v7i1.36910

Issue

Section

First AAAI Symposium on Quantum Information & Machine Learning (QIML): Bridging Quantum Computing and Artificial Intelligence