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首页> 外文期刊>Computational Social Systems, IEEE Transactions on >Deep Representation Learning With Full Center Loss for Credit Card Fraud Detection
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Deep Representation Learning With Full Center Loss for Credit Card Fraud Detection

机译:信用卡欺诈检测全中心损失深度代表学习

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摘要

Credit card fraud detection is an important study in the current era of mobile payment. Improving the performance of a fraud detection model and keeping its stability are very challenging because users’ payment behaviors and criminals’ fraud behaviors are often changing. In this article, we focus on obtaining deep feature representations of legal and fraud transactions from the aspect of the loss function of a deep neural network. Our purpose is to obtain better separability and discrimination of features so that it can improve the performance of our fraud detection model and keep its stability. We propose a new kind of loss function, full center loss (FCL), which considers both distances and angles among features and, thus, can comprehensively supervise the deep representation learning. We conduct lots of experiments on two big data sets of credit card transactions, one is private and another is public, to demonstrate the detection performance of our model by comparing FCL with other state-of-the-art loss functions. The results illustrate that FCL outperforms others. We also conduct experiments to show that FCL can ensure a more stable model than others.
机译:信用卡欺诈检测是当前移动支付时代的重要研究。提高欺诈检测模型的性能,保持其稳定性非常具有挑战性,因为用户的付款行为和犯罪分子的欺诈行为往往正在发生变化。在本文中,我们专注于从深神经网络的损失函数的方面获得法律和欺诈交易的深度特征表示。我们的目的是获得更好的特性可分离和歧视,以便可以提高欺诈检测模型的性能并保持其稳定性。我们提出了一种新的损失函数,全中心损失(FCL),其在特征中考虑了距离和角度,因此可以全面监督深度代表学习。我们对两种大数据集进行了大量的信用卡交易实验,一个是私人,另一个是公开的,通过与其他最先进的损失功能进行比较来展示我们模型的检测性能。结果说明了FCL优于他人。我们还开展实验以表明FCL可以确保比其他模型更稳定。

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