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Phishing Detection Based on Machine Learning and Feature Selection Methods

机译:基于机器学习和特征选择方法的网络钓鱼检测

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With increasing technology developments, the Internet has become everywhere and accessible by everyone. There are a considerable number of web-pages with different benefits. Despite this enormous number, not all of these sites are legitimate. There are so-called phishing sites that deceive users into serving their interests. This paper dealt with this problem using machine learning algorithms in addition to employing a novel dataset that related to phishing detection, which contains 5000 legitimate web-pages and 5000 phishing ones. In order to obtain the best results, various machine learning algorithms were tested. Then J48, Random forest, and Multilayer perceptron were chosen. Different feature selection tools were employed to the dataset in order to improve the efficiency of the models. The best result of the experiment achieved by utilizing 20 features out of 48 features and applying it to Random forest algorithm. The accuracy was 98.11%.
机译:随着技术发展的增加,互联网已成为各地,每个人都可以访问。具有相当数量的网页,具有不同的好处。尽管这个数字巨大,但这些网站都不是合法的。有所谓的网络钓鱼网站,欺骗用户融入他们的兴趣。本文除了采用与网络钓鱼检测相关的新型数据集外,使用机器学习算法还使用机器学习算法进行了处理。为了获得最佳结果,测试了各种机器学习算法。然后选择J48,随机森林和多层的感知者。使用不同的特征选择工具在数据集中用于提高模型的效率。通过使用48个功能的20个功能和将其应用于随机森林算法来实现的实验的最佳结果。准确性为98.11%。

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