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Review and Evaluation of Classification Algorithms Enhancing Internet Security

机译:审查和评估增强互联网安全性的分类算法

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This paper explores online learning and batch algorithms for detecting malicious Web sites (those involved in criminal scams) using lexical and host-based features of the associated URLs. A data set has been built including malicious and benign URLs, and data mining system Weka has been used as an aid to classify the existent URLs and new coming URLs and evaluate the classification algorithms. A real-time malicious URL detection system has been constructed successfully. The experiment result shows that this method can help to reduce internet access risk effectively.
机译:本文探讨了在线学习和批处理算法,该算法使用相关URL的词汇和基于主机的功能来检测恶意网站(涉及犯罪诈骗的网站)。已建立了一个包含恶意和良性URL的数据集,并且数据挖掘系统Weka已被用作帮助对现有URL和新出现的URL进行分类并评估分类算法。成功构建了实时恶意URL检测系统。实验结果表明,该方法可以有效降低互联网访问风险。

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