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Associative Classification Mining for Website Phishing Classification

机译:网站网络钓鱼分类的关联分类挖掘

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Website phishing is one of the crucial research topics for the internet community due to the massive number of online daily transactions. The process of predicting the phishing activity for a website is a typical classification problem in data mining where different website's features such as URL length, prefix and suffix, IP address, etc., are used to discover concealed correlations (knowledge) among these features that are useful for decision makers. In this article, an Associative classification (AC) data mining algorithm that uses association rule methods to build classification systems (classifiers) is developed and applied on the important problem of phishing classification. The proposed algorithm employs a classifier building method that discovers vital rules that possibly can be utilised to detect phishing activity based on a number of significant website's features. Experimental results using the proposed algorithms and three other rule based algorithms on real legitimate and fake websites collected from different sources have been conducted. The results reveal that our algorithm is highly competitive in classifying websites if contrasted with the other rule based classification algorithms with respective to accuracy rate. Further, our algorithm normally extracts smaller classifiers than other AC algorithm because of its novel rule evaluation method which reduces overfitting.
机译:由于网络每日的大量交易,网站网络钓鱼是互联网社区的重要研究主题之一。预测网站的网络钓鱼活动的过程是数据挖掘中的典型分类问题,其中使用不同的网站功能(例如URL长度,前缀和后缀,IP地址等)来发现这些功能之间的隐蔽关联(知识),对决策者很有用。本文中,开发了一种使用关联规则方法构建分类系统(分类器)的关联分类(AC)数据挖掘算法,并将其应用于网络钓鱼分类的重要问题。所提出的算法采用分类器构建方法,该方法根据许多重要网站的特征来发现重要规则,这些重要规则可能可用于检测网络钓鱼活动。在从不同来源收集的真实合法和伪造网站上,使用提出的算法和其他三个基于规则的算法进行了实验结果。结果表明,与其他基于规则的分类算法相比,相对于准确率,我们的算法在网站分类中具有很高的竞争力。此外,由于其新颖的规则评估方法可减少过拟合,因此我们的算法通常会提取比其他AC算法小的分类器。

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