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首页> 外文期刊>International journal of distributed systems and technologies >On Detecting Abnormal Access for Online Ideological and Political Education
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On Detecting Abnormal Access for Online Ideological and Political Education

机译:检测在线思想政治教育的异常访问

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摘要

With the development and spread of networks, online education has become a new way in education. The online education platform encounters a large number of concurrent visiting, while the system must guarantee network security in the process of online education. The network visiting requests are real-time and dynamic in online education. In order to detect network intrusion and abnormal access in real time and adapt to the dynamic changes of network visiting requests, this paper adopts a data stream-based network intrusion detection method to monitor and manage online education visiting. First, a knowledge library is constructed by normal visiting mode and abnormal visiting mode. Second, the dissimilarity between data point and data cluster is used to measure the similarity between normal mode and abnormal mode. Lastly, the knowledge library is updated to reflect the changes of network in online education system by re-clustering. The proposed method is evaluated on a real dataset.
机译:随着网络的发展和传播,在线教育已成为教育的新方式。 在线教育平台遇到大量的并发访问,而系统必须保证在线教育过程中的网络安全。 网络访问请求是在线教育中的实时和动态。 为了实时检测网络入侵和异常访问,适应网络访问请求的动态变化,本文采用基于数据流的网络入侵检测方法来监控和管理在线教育访问。 首先,通过正常的访问模式和异常访问模式构建知识库。 其次,数据点和数据群集之间的不相似性用于测量正常模式和异常模式之间的相似性。 最后,通过重新聚类,更新知识库以反映在线教育系统中的网络变化。 所提出的方法在真实数据集上进行评估。

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