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Teaching Management and Monitoring Abnormal Network Behaviors Under COVID-19

机译:Covid-19下的教学管理和监测异常网络行为

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摘要

Due to the epidemic of COVID-19, more social activities have been moved to the internet, such as online education and online learning. The education management to avoid burst events is a basic requirement of online education, especially when a huge number of persons are visiting at the same time. In order to monitor the abnormal and burst access in online education systems, this paper proposes an anomaly detection method by using data flow to mining high frequency events among massive network traffic data during online education. First, the data flow in traffic network is described as a special structure which is used to establish an efficient high frequent event detection algorithm. Second, the network traffic flow is reduced to make it possible to monitor large-scale concurrent network visiting. The effectiveness of the abnormal network behavior detection method is verified through the experiment on a real network environment for online education.
机译:由于Covid-19流行病,更多的社交活动已被迁移到互联网,例如在线教育和在线学习。 避免突发事件的教育管理是在线教育的基本要求,特别是当大量人在同时访问时。 为了监测在线教育系统中的异常和突发接入,本文通过在在线教育期间使用数据流到大规模网络交通数据中的高频事件来提出异常检测方法。 首先,交通网络中的数据流被描述为一种特殊结构,用于建立有效的高频繁事件检测算法。 其次,缩短了网络流量流量,以便可以监控大规模并行网络访问。 通过对在线教育的真实网络环境的实验验证了异常网络行为检测方法的有效性。

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