Using Attribute-based Feature Selection Approaches and Machine Learning Algorithms for Detecting Fraudulent Website URLs

Mustafa Aydin, I. Butun, K. Bicakci, N. Baykal
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引用次数: 9

Abstract

Phishing is a malicious form of online theft and needs to be prevented in order to increase the overall trust of the public on the Internet. In this study, for that purpose, the authors present their findings on the methods of detecting phishing websites. Data mining algorithms along with classifier algorithms are used in order to achieve a satisfactory result. In terms of classifiers, the Naïve Bayes, SMO, and J48 algorithms are used. As for the feature selection algorithm; Gain Ratio Attribute and ReliefF Attribute are selected. The results are provided in a comparative way. Accordingly; SMO and J48 algorithms provided satisfactory results in the detection of phishing websites, however, Naïve Bayes performed poor and is the least recommended method among all.
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使用基于属性的特征选择方法和机器学习算法检测欺诈性网站url
网络钓鱼是一种恶意的网络盗窃形式,需要加以预防,以增加公众对互联网的整体信任。在这项研究中,为了这个目的,作者介绍了他们在检测网络钓鱼网站的方法上的发现。为了获得满意的结果,使用了数据挖掘算法和分类器算法。在分类器方面,使用了Naïve Bayes、SMO和J48算法。对于特征选择算法;选择增益比属性和ReliefF属性。结果以比较的方式提供。相应的;SMO和J48算法在网络钓鱼网站的检测中取得了令人满意的结果,但Naïve贝叶斯算法表现不佳,是所有方法中最不推荐的方法。
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