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Auteurs principaux: Gerdes, Wout, Acar, Erman
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2411.00431
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author Gerdes, Wout
Acar, Erman
author_facet Gerdes, Wout
Acar, Erman
contents Credit card fraud detection is a critical concern for financial institutions, intensified by the rise of contactless payment technologies. While deep learning models offer high accuracy, their lack of explainability poses significant challenges in financial settings. This paper explores the integration of fuzzy logic into Deep Symbolic Regression (DSR) to enhance both performance and explainability in fraud detection. We investigate the effectiveness of different fuzzy logic implications, specifically Łukasiewicz, Gödel, and Product, in handling the complexity and uncertainty of fraud detection datasets. Our analysis suggest that the Łukasiewicz implication achieves the highest F1-score and overall accuracy, while the Product implication offers a favorable balance between performance and explainability. Despite having a performance lower than state-of-the-art (SOTA) models due to information loss in data transformation, our approach provides novelty and insights into into integrating fuzzy logic into DSR for fraud detection, providing a comprehensive comparison between different implications and methods.
format Preprint
id arxiv_https___arxiv_org_abs_2411_00431
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Integrating Fuzzy Logic into Deep Symbolic Regression
Gerdes, Wout
Acar, Erman
Artificial Intelligence
Logic in Computer Science
Symbolic Computation
Credit card fraud detection is a critical concern for financial institutions, intensified by the rise of contactless payment technologies. While deep learning models offer high accuracy, their lack of explainability poses significant challenges in financial settings. This paper explores the integration of fuzzy logic into Deep Symbolic Regression (DSR) to enhance both performance and explainability in fraud detection. We investigate the effectiveness of different fuzzy logic implications, specifically Łukasiewicz, Gödel, and Product, in handling the complexity and uncertainty of fraud detection datasets. Our analysis suggest that the Łukasiewicz implication achieves the highest F1-score and overall accuracy, while the Product implication offers a favorable balance between performance and explainability. Despite having a performance lower than state-of-the-art (SOTA) models due to information loss in data transformation, our approach provides novelty and insights into into integrating fuzzy logic into DSR for fraud detection, providing a comprehensive comparison between different implications and methods.
title Integrating Fuzzy Logic into Deep Symbolic Regression
topic Artificial Intelligence
Logic in Computer Science
Symbolic Computation
url https://arxiv.org/abs/2411.00431