RIFF: Inducing Rules for Fraud Detection from Decision Trees
Financial fraud is the cause of multi-billion dollar losses annually. Traditionally, fraud detection systems rely on rules due to their transparency and interpretability, key features in domains where decisions need to be explained. However, rule systems require significant input from domain experts...
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Zusammenfassung: | Financial fraud is the cause of multi-billion dollar losses annually.
Traditionally, fraud detection systems rely on rules due to their transparency
and interpretability, key features in domains where decisions need to be
explained. However, rule systems require significant input from domain experts
to create and tune, an issue that rule induction algorithms attempt to mitigate
by inferring rules directly from data. We explore the application of these
algorithms to fraud detection, where rule systems are constrained to have a low
false positive rate (FPR) or alert rate, by proposing RIFF, a rule induction
algorithm that distills a low FPR rule set directly from decision trees. Our
experiments show that the induced rules are often able to maintain or improve
performance of the original models for low FPR tasks, while substantially
reducing their complexity and outperforming rules hand-tuned by experts. |
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DOI: | 10.48550/arxiv.2408.12989 |