Locally Interpretable One-Class Anomaly Detection for Credit Card Fraud Detection

Tungyu Wu, Youting Wang
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引用次数: 7

Abstract

For the highly imbalanced credit card fraud detection problem, most existing methods either use data augmentation methods or conventional machine learning models, while anomaly-detection-based approaches are not sufficient. Furthermore, few studies have employed AI interpretability tools to investigate the feature importance of transaction data, which is crucial for the black-box fraud detection module. Considering these two points together, we propose a novel anomaly detection framework for credit card fraud detection as well as a model-explaining module responsible for prediction explanations. The fraud detection model is composed of two deep neural networks, which are trained in an unsupervised and adversarial manner. Precisely, the generator is an AutoEncoder aiming to reconstruct genuine transaction data, while the discriminator is a fully-connected network for fraud detection. The explanation module has three white-box explainers in charge of interpretations of the AutoEncoder, discriminator, and the whole detection model, respectively. Experimental results show the state-of-the-art performances of our fraud detection model on the benchmark dataset compared with baselines. In addition, prediction analyses by three explainers are presented, offering a clear perspective on how each feature of an instance of interest contributes to the final model output. Our code is available at https://github.com/tony10101105/Locally-Interpretable-One-Class-Anomaly-Detection-for-Credit-Card-Fraud-Detection.
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局部可解释的一类信用卡欺诈检测异常
对于高度不平衡的信用卡欺诈检测问题,大多数现有方法要么使用数据增强方法,要么使用传统的机器学习模型,而基于异常检测的方法是不够的。此外,很少有研究使用人工智能可解释性工具来研究交易数据的特征重要性,这对于黑盒欺诈检测模块至关重要。综合考虑这两点,我们提出了一种新的信用卡欺诈检测异常检测框架,以及负责预测解释的模型解释模块。欺诈检测模型由两个深度神经网络组成,它们以无监督和对抗的方式进行训练。准确地说,生成器是一个旨在重建真实交易数据的AutoEncoder,而鉴别器是一个用于欺诈检测的全连接网络。解释模块有三个白盒解释器,分别负责AutoEncoder、discriminator和整个检测模型的解释。实验结果表明,与基线相比,我们的欺诈检测模型在基准数据集上具有最先进的性能。此外,本文还介绍了三个解释器的预测分析,提供了一个清晰的视角,说明感兴趣实例的每个特征如何对最终模型输出做出贡献。我们的代码可在https://github.com/tony10101105/Locally-Interpretable-One-Class-Anomaly-Detection-for-Credit-Card-Fraud-Detection上获得。
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