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

机译:基于经常性神经网络检测基于交易序列建模的在线游戏退款欺诈

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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,充电/购买量,时间和国家的梯度作为交易的特征的在线游戏金钱退款欺诈检测方法。我们利用经常性神经网络模拟交易序列,该交易序列还结合了单个特征向量中的充电和购买事务特征。在使用真实数据(483,410个交易日志)的实验中,从韩国着名的在线游戏公司,所提出的方法显示78%的召回率,误差率为0.057%。此召回率优于利用交易统计数据作为特征的当前方法优于当前方法7%。

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