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SCARFF: a Scalable Framework for Streaming Credit Card Fraud Detection with Spark

机译:SCARFF:使用Spark传输信用卡欺诈检测的可扩展框架

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摘要

The expansion of the electronic commerce, together with an increasing confidence of customers in electronic payments, makes of fraud detection a critical factor. Detecting frauds in (nearly) real time setting demands the design and the implementation of scalable learning techniques able to ingest and analyse massive amounts of streaming data. Recent advances in analytics and the availability of open source solutions for Big Data storage and processing open new perspectives to the fraud detection field. In this paper we present a SCAlable Real-time Fraud Finder (SCARFF) which integrates Big Data tools (Kafka, Spark and Cassandra) with a machine learning approach which deals with imbalance, nonstationarity and feedback latency. Experimental results on a massive dataset of real credit card transactions show that this framework is scalable, efficient and accurate over a big stream of transactions.
机译:电子商务的扩展,以及客户对电子支付的信心不断增强,使得欺诈检测成为关键因素。在(几乎)实时设置中检测欺诈行为需要设计和实现可摄取和分析大量流数据的可扩展学习技术。分析技术的最新进展以及大数据存储和处理的开源解决方案的可用性为欺诈检测领域开辟了新的视角。在本文中,我们提出了一种SCAlable实时欺诈查找器(SCARFF),它将大数据工具(Kafka,Spark和Cassandra)与一种用于解决不平衡,不稳定和反馈等待时间的机器学习方法相集成。在大量真实信用卡交易的数据集上的实验结果表明,该框架在大量交易中具有可伸缩性,高效性和准确性。

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