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A utilitarian approach to adversarial learning in credit card fraud detection

机译:信用卡欺诈检测中对抗性学习的一种实用方法

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Credit card fraud detection can be modeled as an adversarial game between a fraudster and the fraud detection mechanism. Previous work uses a game theoretical adversarial learning approach to model the most successful strategy and preemptively adapt the fraud detection system. The game consists of the adversary's selection of strategy and the fraud detection system's decision to retrain. In the previous work, the detection system is retrained every round of the game. In application, there may be costs and risks associated with training and deploying a new model. Thus, it may be desirable to optimize the decision of whether to retrain the model based on the expected economic disutility. The presented work addresses this desire by using a utilitarian approach to optimally decide whether to retrain the classifier by comparing the economic values of the new and old classifiers. A framework from decision theory is derived within the context of credit card fraud. Further, we show how a utility function can be used to identify the best fraud strategy in economic terms. We add to the literature by extending the adversarial learning model developed in previous work to include a theoretical framework for retraining when it is economically advantageous and judging fraud strategies on their economic cost. Our approaches are tested against the decisions to always retrain and to never retrain.
机译:信用卡欺诈检测可以建模为欺诈者和欺诈检测机制之间的对抗游戏。先前的工作使用博弈论对抗学习方法来建模最成功的策略,并抢先采用欺诈检测系统。游戏包括对手的策略选择和欺诈检测系统的重新训练决定。在先前的工作中,检测系统在游戏的每个回合中都进行了重新训练。在应用中,可能存在与培训和部署新模型相关的成本和风险。因此,可能期望基于预期的经济效用来优化是否重新训练模型的决策。通过比较新旧分类器的经济价值,本研究通过使用功利主义方法来最佳地决定是否对分类器进行再培训,从而满足了这一需求。决策理论的框架是在信用卡欺诈的背景下得出的。此外,我们展示了效用函数如何用于从经济角度确定最佳欺诈策略。我们通过扩展先前工作中开发的对抗性学习模型来增加文献资料,以包括一个在经济上有利时进行再培训的理论框架,并根据其经济成本来判断欺诈策略。我们的方法针对始终重新训练和永不重新训练的决策进行了测试。

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