Intelligent Association Classification Technique for Phishing Website Detection

Mustafa A. Al-Fayoumi, J. Alwidian, Mohammad Abusaif
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引用次数: 13

Abstract

Many critical applications need more accuracy and speed in the decision making process. Data mining scholars developed set of artificial automated tools to enhance the entire decisions based on type of application. Phishing is one of the most critical application needs for high accuracy and speed in decision making when a malicious webpage impersonates as legitimate webpage to acquire secret information from the user. In this paper, we proposed a new Association Classification (AC) algorithm as an artificial automated tool to increase the accuracy level of the classification process that aims to discover any malicious webpage. An Intelligent Association Classification (IAC) algorithm developed in this article by employing the Harmonic Mean measure instead of the support and confidence measure to solve the estimation problem in these measures and discovering hidden pattern not generated by the existing AC algorithms. Our algorithm compared with four well-known AC algorithm in terms of accuracy, F1, Precision, Recall and execution time. The experiments and the visualization process show that the IAC algorithm outperformed the others in all cases and emphasize on the importance of the general and specific rules in the classification process.
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网络钓鱼网站检测的智能关联分类技术
许多关键应用程序在决策过程中需要更高的准确性和速度。数据挖掘学者开发了一套人工自动化工具来增强基于应用类型的整体决策。当恶意网页冒充合法网页获取用户的机密信息时,网络钓鱼对决策的准确性和速度的要求是应用程序中最关键的要求之一。在本文中,我们提出了一种新的关联分类(AC)算法,作为一种人工自动化工具来提高分类过程的准确性,旨在发现任何恶意网页。本文提出了一种智能关联分类(IAC)算法,采用谐波均值测度代替支持度和置信度测度,解决了这些测度中的估计问题,并发现了现有AC算法无法生成的隐藏模式。我们的算法在准确率、F1、精密度、召回率和执行时间等方面与四种知名的AC算法进行了比较。实验和可视化过程表明,IAC算法在所有情况下都优于其他算法,并强调了分类过程中一般规则和特定规则的重要性。
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