MapReduce Approach to Build Network User Profiles with Top-k Rankings for Network Security

A. Parres-Peredo, I. Piza-Dávila, Francisco Cervantes
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引用次数: 2

Abstract

Network-user profiling has been used as security technique to detect unknown or malicious behaviors. Top-k rankings of reached services is a new technique for building user profiles. This technique requires to keep in memory all the traffic data during a period of time to build the rankings. However, a single user can produce gigabytes of network traffic data, which may result in low execution performance and out-of memory errors. This work proposes a MapReduce approach that generates top-k rankings from huge network capture files.
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基于MapReduce的Top-k排序网络用户配置文件构建方法
网络用户分析已被用作检测未知或恶意行为的安全技术。对到达的服务进行Top-k排名是一种建立用户档案的新技术。这种技术需要在一段时间内将所有流量数据保存在内存中以构建排名。但是,单个用户可能产生千兆字节的网络流量数据,这可能导致低执行性能和内存不足错误。这项工作提出了一种MapReduce方法,可以从巨大的网络捕获文件中生成top-k排名。
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