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A Bayesian Classifier based on Constraints of Ordering of Variables for Fraud Detection

机译:一种贝叶斯分类器,基于对欺诈检测变量排序的约束

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Fraud detection is important for financial institutions and the society. Supervised machine learning techniques were applied for fraud detection. However, mostly discriminative techniques were applied on these problems. Probabilistic graphical models can also detect fraud, providing also a graphical representation of its reasoning scheme as a graph. We proposed a method to generate a probabilistic graphical model for fraud detection, using constraints related to the domain. We achieved 99.272% of accuracy and we outperformed other baselines techniques of probabilistic graphical models. We demonstrated that constraints are important to tackle complex problem such a fraud detection.
机译:欺诈检测对于金融机构和社会非常重要。监督机器学习技术涉及欺诈检测。然而,主要应用于这些问题的歧视技术。概率图形模型还可以检测欺诈,也可以作为图形的推理方案的图形表示。我们提出了一种方法来生成用于欺诈检测的概率图形模型,使用与域相关的约束。我们实现了99.272%的准确性,并且我们表现出概率图形模型的其他基线技术。我们展示了限制对于解决复杂问题,这是一个如此欺诈检测。

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