With the development of high technology, the scope of fraud is increasing, resulting in annual losses of billions of dollars worldwide. The preventive protection measures become obsolete and vulnerable over time, so effective detective tools are needed. In this paper, we propose a convolutional neural network architecture SpiderNet designed to solve fraud detection problems. We noticed that the principles of pooling and convolutional layers in neural networks are very similar to the way antifraud analysts work when conducting investigations. Moreover, the skip-connections used in neural networks make the usage of features of various power in antifraud models possible. Our experiments have shown that SpiderNet provides better quality compared to Random Forest and adapted for antifraud modeling problems 1D-CNN, 1D-DenseNet, F-DenseNet neural networks. We also propose new approaches for fraud feature engineering called B-tests and W-tests, which generalize the concepts of Benford's Law for fraud anomalies detection. Our results showed that B-tests and W-tests give a significant increase to the quality of our antifraud models. The SpiderNet code is available at https://github.com/aasmirnova24/SpiderNet
翻译:随着高技术的发展,欺诈的范围正在扩大,每年在全世界损失数十亿美元。预防性保护措施随着时间的流逝而过时,变得脆弱,因此需要有效的侦探工具。在本文件中,我们提议建立一个革命神经网络结构结构蜘蛛网络,旨在解决欺诈探测问题。我们注意到神经网络中的集合和富集层原则与反欺诈分析家进行调查时的工作方式非常相似。此外,神经网络使用的跳接连接使得有可能在反欺诈模型中使用各种力量的特点。我们的实验显示,蜘蛛网比随机森林提供质量更高,并适应反欺诈模型问题1D-CNN、1D-DenseNet、F-DenseNet神经网络。我们还提出了欺诈特征工程的新方法,称为B-测试和W-测试,它概括了本福德法律关于欺诈异常侦测的概念。我们的结果表明,B-测试和W-测试使我们的反欺诈模型的质量大大提高了。蜘蛛网代码可在https://github.com/aspidir24/SNetirnova查阅。