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Phishing Attack Detection using Machine Learning Classification Techniques

机译:使用机器学习分类技术的网络钓鱼攻击检测

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Phishing attacks are the most common form of attacks that can happen over the internet. This method involves attackers attempting to collect data of a user without his/her consent through emails, URLs, and any other link that leads to a deceptive page where a user is persuaded to commit specific actions that can lead to the successful completion of an attack. These attacks can allow an attacker to collect vital information of the user that can often allow the attacker to impersonate the victim and get things done that only the victim should have been able to do, such as carry out transactions, or message someone else, or simply accessing the victim's data. Many studies have been carried out to discuss possible approaches to prevent such attacks. This research work includes three machine learning algorithms to predict any websites' phishing status. In the experimentation these models are trained using URL based features and attempted to prevent Zero-Day attacks by using proposed software proposal that differentiates the legitimate websites and phishing websites by analyzing the website's URL. From observations, the random forest classifier performed with a precision of 97%, a recall 99%, and F1 Score is 97%. Proposed model is fast and efficient as it only works based on the URL and it does not use other resources for analysis, as was the case for past studies.
机译:网络钓鱼攻击是互联网可能发生的最常见的攻击形式。这种方法涉及试图通过电子邮件,URL和其他任何其他链接收集用户的攻击者,该攻击者通过电子邮件,URL和任何其他链接导致欺骗页面,其中欺骗页面提交了可以导致成功完成攻击的特定操作。这些攻击可以允许攻击者收集用户的重要信息,这些攻击通常可以让攻击者冒充受害者,并且只有受害者所做的事情,只有受害者应该能够做到,例如执行交易,或者给别人留言或留言只需访问受害者的数据。已经开展了许多研究,以讨论可能的方法以防止这种攻击。该研究包括三种机器学习算法,以预测任何网站的网络钓鱼状态。在试验这些模型是使用基于URL的功能,并试图阻止零日攻击通过使用通过分析该网站的网址区分合法网站和钓鱼网站提出建议的软件培训。从观察开始,随机森林分类器的精度为97%,召回99%,F1得分为97%。提出的模型快速富有高效,因为它仅基于URL工作,它不使用其他资源进行分析,就像过去研究的情况一样。

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