Online Credit Card Fraud Detection: A Hybrid Framework With Big Data Technologies

2016 IEEE TRUSTCOM/BIGDATASE/ISPA(2016)

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摘要
In this paper, we focus on designing an online credit card fraud detection framework with big data technologies, by which we want to achieve three major goals: 1) the ability to fuse multiple detection models to improve accuracy; 2) the ability to process large amount of data and 3) the ability to do the detection in real time. To accomplish that, we propose a general workflow, which satisfies most design ideas of current credit card fraud detection systems. We further implement the workflow with a new framework which consists of four layers: distributed storage layer, batch training layer, key-value sharing layer and streaming detection layer. With the four layers, we are able to support massive trading data storage, fast detection model training, quick model data sharing and real-time online fraud detection, respectively. We implement it with latest big data technologies like Hadoop, Spark, Storm, HBase, etc. A prototype is implemented and tested with a synthetic dataset, which shows great potentials of achieving the above goals.
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关键词
Online Credit Card Fraud Detection Frame-work,Big Data,Model Fusion,Hadoop,Spark,Storm,HBase
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