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Detecting fraud in adversarial environments: A reinforcement learning approach

机译:在对抗性环境中检测欺诈:强化学习方法

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Credit card fraud is a costly problem for banks and a major frustration for consumers. As such, static models to detect fraud that rely on supervised training are exposed to the risk of being learned and circumvented. Previous adversarial learning work in fraud prevention showed increased effectiveness over static models that did not account for changing fraudster behavior. We extend this work by utilizing Reinforcement Learning and framing the fraudster and card issuer interaction as a Markov Decision Process (MDP) and performing prediction and control. Our MDP takes on the perspective of an agent (in this case the fraudster with a stolen credit card) who interacts with an environment (merchants and a fraud classifier), by taking actions (transactions), and receiving rewards (relating to whether the transactions were successful/declined). This approach allows us to simulate fraudulent episodes in such a way that techniques like model-free policy iteration can identify an optimal policy for the fraudster. The episode ends when the card is terminated by the credit card company for fraud. We found that, compared to a static classifier, making small changes to our fraud classifier on a regular basis led to a significant decrease in the ability of a fraud agent to learn an optimal policy.
机译:信用卡欺诈对银行来说是一个代价高昂的问题,对消费者来说是一个重大的挫折。这样,依靠监督培训来检测欺诈的静态模型面临着被学习和规避的风险。以前在欺诈预防中的对抗性学习工作显示出比静态模型更高的有效性,而静态模型并不能说明欺诈者行为的变化。我们通过利用强化学习和将欺诈者与发卡行之间的交互作为Markov决策过程(MDP)并执行预测和控制来扩展这项工作。我们的MDP通过采取行动(交易)并获得奖励(与交易是否相关)来考虑与环境(商人和欺诈分类器)进行交互的代理商(在这种情况下,信用卡被盗的欺诈者)的观点。成功/被拒绝)。这种方法使我们能够以某种方式模拟欺诈事件,从而使诸如无模型策略迭代之类的技术可以为欺诈者确定最佳策略。当信用卡公司因欺诈而终止卡时,情节结束。我们发现,与静态分类器相比,定期对欺诈分类器进行细微更改会导致欺诈代理学习最佳策略的能力大大降低。

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