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Optimization of URL-Based Phishing Websites Detection through Genetic Algorithms

机译:基于URL的网络钓鱼网站通过遗传算法进行了优化

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摘要

Website phishing is an online crime for obtaining secret information such as passwords, account numbers, and credit card details. Attackers lure users through attractive hyperlinks, in order to, redirect to the fake websites. Phishing detection through a machine-learning approach has become quite effective nowadays. In this research, the Uniform Resource Locator (URL) based phishing detection approach has been used. Machine-learning classifiers like Na?ve Bayes, Iterative Dichotomiser-3 (ID3), K-Nearest Neighbor (KNN), Decision Tree and Random Forest used for the classification of legitimate and illegitimate websites. This classification would help in the detection of phishing websites. However, it has been observed that use of Genetic Algorithms (GAs) for feature selection can improve the detection accuracy. Our experimental results portrayed the use of Iterative Dichotomiser-3 (ID3) along with Yet Another Generating Genetic Algorithm (YAGGA) improves the detection accuracy up to 95%.
机译:网站网络钓鱼是获取密码,帐号和信用卡详细信息等秘密信息的在线犯罪。 攻击者通过吸引人的超链接引诱用户,以便重定向到假网站。 通过机器学习方法的网络钓鱼检测已经变得非常有效。 在本研究中,已经使用了基于统一的资源定位器(URL)的网络钓鱼检测方法。 机器学习分类器,如Na?ve贝叶斯,迭代二分异语-3(ID3),k最近邻(knn),决策树和随机森林,用于分类合法和非法网站。 此分类将有助于检测网络钓鱼网站。 然而,已经观察到遗传算法(气体)用于特征选择可以提高检测精度。 我们的实验结果描绘了使用迭代二甲状腺素-3(ID3)以及另一种产生遗传算法(Yagga)的使用改善了高达95%的检测精度。

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