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Detecting Online Game Chargeback Fraud Based on Transaction Sequence Modeling Using Recurrent Neural Network

机译:基于递归神经网络的交易序列建模检测在线游戏拒付欺诈

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We propose an online game money chargeback fraud detection method using operation sequence, gradient of charge/purchase amount, time and country as features of a transaction. We model the sequence of transactions with a recurrent neural network which also combines charge and purchase transaction features in single feature vector. In experiments using real data (a 483,410 transaction log) from a famous online game company in Korea, the proposed method shows a 78% recall rate with a 0.057% false positive rate. This recall rate is 7% better than current methodology utilizing transaction statistics as features.
机译:我们提出了一种使用操作顺序,收费/购买金额的梯度,时间和国家/地区作为交易特征的在线游戏退款拒付欺诈检测方法。我们使用递归神经网络对交易序列进行建模,该神经网络还将充电和购买交易特征组合在单个特征向量中。在使用来自韩国著名在线游戏公司的真实数据(483,410个事务日志)进行的实验中,所提出的方法显示出78%的召回率和0.057%的误报率。该召回率比以交易统计为特征的当前方法要高出7%。

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