CleverCatch: A Knowledge-Guided Weak Supervision Model for Fraud Detection

计算机科学 机器学习 人工智能 异常检测 启发式 可解释性 桥接(联网) 过程(计算) 自编码 嵌入 主题专家 领域知识 领域(数学分析) 适应性 监督学习 数据挖掘 维数之咒 专家系统 训练集 数据驱动 特征学习 医疗保健 标记数据 人工神经网络 无监督学习 深度学习 降维
作者
A A Mozafari,Kourosh Hashemi,Erfan Shafagh,Seyed Ahmad Motamedi,Abderrahim Tayebi,Mohammad A. Tayebi
出处
期刊:Cornell University - arXiv [Cornell University]
标识
DOI:10.48550/arxiv.2510.13205
摘要

Healthcare fraud detection remains a critical challenge due to limited availability of labeled data, constantly evolving fraud tactics, and the high dimensionality of medical records. Traditional supervised methods are challenged by extreme label scarcity, while purely unsupervised approaches often fail to capture clinically meaningful anomalies. In this work, we introduce CleverCatch, a knowledge-guided weak supervision model designed to detect fraudulent prescription behaviors with improved accuracy and interpretability. Our approach integrates structured domain expertise into a neural architecture that aligns rules and data samples within a shared embedding space. By training encoders jointly on synthetic data representing both compliance and violation, CleverCatch learns soft rule embeddings that generalize to complex, real-world datasets. This hybrid design enables data-driven learning to be enhanced by domain-informed constraints, bridging the gap between expert heuristics and machine learning. Experiments on the large-scale real-world dataset demonstrate that CleverCatch outperforms four state-of-the-art anomaly detection baselines, yielding average improvements of 1.3\% in AUC and 3.4\% in recall. Our ablation study further highlights the complementary role of expert rules, confirming the adaptability of the framework. The results suggest that embedding expert rules into the learning process not only improves detection accuracy but also increases transparency, offering an interpretable approach for high-stakes domains such as healthcare fraud detection.
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