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Autori principali: Maragkopoulos, Georgios, Chavatzoglou, Lazaros, Mandilara, Aikaterini, Syvridis, Dimitris
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2511.19150
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author Maragkopoulos, Georgios
Chavatzoglou, Lazaros
Mandilara, Aikaterini
Syvridis, Dimitris
author_facet Maragkopoulos, Georgios
Chavatzoglou, Lazaros
Mandilara, Aikaterini
Syvridis, Dimitris
contents In finance, predictive models must balance accuracy and interpretability, particularly in credit risk assessment, where model decisions carry material consequences. We present a quantum neural network (QNN) based on a single qudit, in which both data features and trainable parameters are co-encoded within a unified unitary evolution generated by the full Lie algebra. This design explores the entire Hilbert space while enabling interpretability through the magnitudes of the learned coefficients. We benchmark our model on a real-world, imbalanced credit-risk dataset from Taiwan. The proposed QNN consistently outperforms LR and reaches the results of random forest models in macro-F1 score while preserving a transparent correspondence between learned parameters and input feature importance. To quantify the interpretability of the proposed model, we introduce two complementary metrics: (i) the edit distance between the model's feature ranking and that of LR, and (ii) a feature-poisoning test where selected features are replaced with noise. Results indicate that the proposed quantum model achieves competitive performance while offering a tractable path toward interpretable quantum learning.
format Preprint
id arxiv_https___arxiv_org_abs_2511_19150
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Feature Ranking in Credit-Risk with Qudit-Based Networks
Maragkopoulos, Georgios
Chavatzoglou, Lazaros
Mandilara, Aikaterini
Syvridis, Dimitris
Quantum Physics
Machine Learning
In finance, predictive models must balance accuracy and interpretability, particularly in credit risk assessment, where model decisions carry material consequences. We present a quantum neural network (QNN) based on a single qudit, in which both data features and trainable parameters are co-encoded within a unified unitary evolution generated by the full Lie algebra. This design explores the entire Hilbert space while enabling interpretability through the magnitudes of the learned coefficients. We benchmark our model on a real-world, imbalanced credit-risk dataset from Taiwan. The proposed QNN consistently outperforms LR and reaches the results of random forest models in macro-F1 score while preserving a transparent correspondence between learned parameters and input feature importance. To quantify the interpretability of the proposed model, we introduce two complementary metrics: (i) the edit distance between the model's feature ranking and that of LR, and (ii) a feature-poisoning test where selected features are replaced with noise. Results indicate that the proposed quantum model achieves competitive performance while offering a tractable path toward interpretable quantum learning.
title Feature Ranking in Credit-Risk with Qudit-Based Networks
topic Quantum Physics
Machine Learning
url https://arxiv.org/abs/2511.19150