Credit Card Fraud Detection: Analyzing the Performance of Four Machine Learning Models

Rupali Aggarwal, P. Sarangi, A. Sahoo
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Abstract

In the era where most of our transactions whether it is for shopping, electricity bills, insurance payments, school and college fees are paid using plastic money through wireless and various online modes. Increase in both online transactions and ecommerce platforms has given rise to many online frauds these days and also security threats. To detect these fraudulent activities, we created a machine learning model. In this research we modeled a dataset using Machine Learning Algorithms. It is proposed to predict fraudulent transactions made by users. It is a real-life example of a binary Classification problem. This research emphasizes on analyzing and pre-processing the dataset and implementing various python libraries, and used concepts like Exploratory Data Analysis, Data Modeling, Feature Extraction etc. and implemented a fraud detection process using the four algorithms.
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信用卡欺诈检测:分析四种机器学习模型的性能
在这个时代,我们的大部分交易,无论是购物,电费,保险支付,学校和大学学费都是通过无线和各种在线模式使用塑料货币支付的。如今,网上交易和电子商务平台的增加引发了许多网上欺诈行为,也带来了安全威胁。为了检测这些欺诈行为,我们创建了一个机器学习模型。在这项研究中,我们使用机器学习算法对数据集进行建模。提出了预测用户欺诈交易的方法。这是一个现实生活中的二元分类问题。本研究着重分析和预处理数据集,实现各种python库,并使用探索性数据分析,数据建模,特征提取等概念,并使用四种算法实现欺诈检测过程。
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