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Predictive Modelling For Credit Card Fraud Detection Using Data Analytics

机译:使用数据分析的信用卡欺诈检测的预测模型

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The finance and banking is very important sector in our present day generation, where almost every human has to deal with bank either physically or online [10]. The productivity and profitability of both public and private sector has tremendously increased because of banking information system. Nowadays most of E-commerce application system transactions are done through credit card and online net banking. These systems are vulnerable with new attacks and techniques at alarming rate. Fraud detection in banking is one of the vital aspects nowadays as finance is major sector in our life. As data is increasing in terms of Peta Bytes (PB) and to improve the performance of analytical server in model building, we have interface analytical framework with Hadoop which can read data efficiently and give to analytical server for fraud prediction. In this paper we have discussed a Big data analytical framework to process large volume of data and implemented various machine learning algorithms for fraud detection and observed their performance on benchmark dataset to detect frauds on real time basis there by giving low risk and high customer satisfaction.
机译:金融和银行业是当今这一代非常重要的部门,几乎每个人都必须亲自或在线与银行打交道[10]。由于银行信息系统,公共部门和私营部门的生产率和利润率都大大提高了。如今,大多数电子商务应用程序系统交易都是通过信用卡和在线网上银行完成的。这些系统容易受到新攻击和新技术的攻击,速度惊人。由于金融是我们生活中的主要部门,因此在银行中欺诈检测已成为当今的重要方面之一。随着数据以Peta Bytes(PB)的形式增加以及为了提高分析服务器在模型构建中的性能,我们拥有了与Hadoop的接口分析框架,该框架可以有效读取数据并将其提供给分析服务器进行欺诈预测。在本文中,我们讨论了一个大数据分析框架来处理大量数据,并实现了各种机器学习算法以进行欺诈检测,并在基准数据集上观察了它们的性能,从而通过低风险和高客户满意度实时检测欺诈。

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