金融欺诈检测中机器学习特征工程的新框架

Chie Ikeda, K. Ouazzane, Qicheng Yu
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引用次数: 1

摘要

尽管机器学习(ML)支持的欺诈检测模型取得了进步,但金融欺诈活动仍在飙升。为了解决这个问题,我们提出了一个新的ML模型特征工程框架。该框架包括结合特征聚合和特征转换的特征创建,以及适应各种ML算法的特征选择。为了说明该框架的有效性,我们使用实际的金融交易数据集进行了实验,并表明该框架显着提高了ML欺诈检测模型的性能。具体来说,所有由我们的框架生成的特征集补充的ML模型,在f1测量上超过了没有这样一个特征集的相同模型近40%,在曲线下面积(AUC)值上超过了20%。
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A New Framework of Feature Engineering for Machine Learning in Financial Fraud Detection
Financial fraud activities have soared despite the advancement of fraud detection models empowered by machine learning (ML). To address this issue, we propose a new framework of feature engineering for ML models. The framework consists of feature creation that combines feature aggregation and feature transformation, and feature selection that accommodates a variety of ML algorithms. To illustrate the effectiveness of the framework, we conduct an experiment using an actual financial transaction dataset and show that the framework significantly improves the performance of ML fraud detection models. Specifically, all the ML models complemented by a feature set generated from our framework surpass the same models without such a feature set by nearly 40% on the F1-measure and 20% on the Area Under the Curve (AUC) value.
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