Machine Learning and Deep Learning for Phishing Page Detection

Swatej Patil, Mayur S. Patil, Kotadi Chinnaiah
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Abstract

The term "phishing" is often used to describe an attempt to obtain confidential data such as passwords or credit card details by impersonating a trustworthy source. In most cases, the term refers to attempts to trick users into providing sensitive information in response to a fraudulent email or web page. However, the term is also used to describe a broader category of online attacks to obtain sensitive information or to disrupt services or systems. Incorporating different machine learning and deep learning algorithms, including Support Vector Machine (SVM), Gradient Boosting Machine (GBM), and random forest, the authors of this research presented a technique for identifying phishing websites. The data sets from PhishTank and the University of New Brunswick were used to train and test the learning models. The XGboost model was able to surpass most existing techniques by achieving a maximum accuracy of 86.8%. This technique can be used in modern web browsers like Google Chrome and Mozilla Firefox to accurately detect phishing websites.
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网络钓鱼页面检测的机器学习和深度学习
术语“网络钓鱼”通常用于描述通过冒充可信来源获取机密数据(如密码或信用卡详细信息)的尝试。在大多数情况下,该术语指的是试图欺骗用户提供敏感信息,以回应欺诈性电子邮件或网页。然而,该术语也用于描述更广泛的一类在线攻击,以获取敏感信息或破坏服务或系统。结合不同的机器学习和深度学习算法,包括支持向量机(SVM)、梯度增强机(GBM)和随机森林,本研究的作者提出了一种识别网络钓鱼网站的技术。来自PhishTank和新不伦瑞克大学的数据集被用于训练和测试学习模型。XGboost模型能够超越大多数现有技术,达到86.8%的最大准确率。这种技术可以用于现代网络浏览器,如b谷歌Chrome和Mozilla Firefox,以准确检测网络钓鱼网站。
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