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Implementation of Intelligent Searching Using Self-Organizing Map for Webmining Used in Document Containing Information in Relation to Cyber Terrorism

机译:使用自组织映射的Webmining智能搜索的实现,该Webmining用于包含与网络恐怖主义有关的信息的文档

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The terrorism activities are not only in real world as development of technology, but also in cyber world. Terrorism activities in cyber world are called cyber terrorism. One of methodology for cyber terrorism detection is by applying data mining algorithm to textual content of terrorism related web pages. Web mining is technology applied to extract information from the web. By using web mining, cyber terrorism information will be collected from internet. This research aims to use text cluster technique, by which the web documents are clustered using Self-Organizing Map algorithm based on number of occurrences of the certain words in documents that have relevance to cyber terrorism. The result shows mapping of the clustered documents that have performance 6.1 and 22.75 in term of vector quantization error (VQE). According this result, we concluded that Self-Organizing Map (SOM) is able to visualizethe topology of the data, by converting statistical relationship among the data into simple geometrical relationship of their image points in 2-dimensional grid.
机译:恐怖主义活动不仅在现实世界中作为技术的发展,而且在网络世界中。网络世界的恐怖主义活动被称为网络恐怖主义。网络恐怖主义检测方法之一是通过将数据挖掘算法应用于恐怖主义相关网页的文本内容。网站挖掘是技术应用于从网络中提取信息的技术。通过使用网站挖掘,网络恐怖主义信息将从互联网收集。本研究旨在使用文本集群技术,通过基于与网络恐怖主义相关的某些单词的出现数量的自组织地图算法来聚集网络文档。结果显示了在矢量量化错误(VQE)期间具有性能6.1和22.75的群集文档的映射。根据这一结果,我们得出结论,通过将数据之间的统计关系转换为2维网格中的图像点的简单几何关系,通过组织地图(SOM)能够纳入数据的拓扑。

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