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Phishing Attacks Detection using Deep Learning Approach

机译:使用深度学习方法进行网络钓鱼攻击检测

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In the COVID-19 pandemic, people are enforced to adopt ‘work from home’ policy. The Internet has become an effective channel for social interactions nowadays. Peoples' immense dependence on digital platform opens doors for fraud. Phishing is a type of cybercrime to steal users' credentials from online platforms such as online banking, online business, e-commerce, online classroom, digital marketplaces, etc. Phishers develop fake webpages alike the original one and send spam emails to hook the users. Phishers seize users' credentials when an online user visits the counterfeit webpages through the spams. Researchers have introduced enormous tools like blacklist, white-list, and antivirus software to detect phishing webpages. Attackers always devise creative ways to exploit human and network weakness to penetrate cyber defense. This paper presents a data-driven framework for detecting phishing webpages using deep learning approach. More precisely, a multilayer perceptron, which is also referred as a feed-forward neural network is used to predict the phishing webpages. The dataset was collected from Kaggle and contains information of ten thousand webpages. It consists of ten attributes. The proposed model has achieved 95% training accuracy and 93% test accuracy.
机译:在COVID-19大流行中,人们被迫采取“在家工作”政策。互联网已成为当今社会互动的有效渠道。人们对数字平台的极大依赖为欺诈打开了大门。网络钓鱼是一种网络犯罪,可以从在线平台(例如,在线银行,在线业务,电子商务,在线教室,数字市场等)中窃取用户的凭据。网络钓鱼者会像原始网页一样开发伪造网页,并发送垃圾邮件来吸引用户。 。当在线用户通过垃圾邮件访问假冒网页时,网络钓鱼者会抓住用户的凭据。研究人员已经引入了黑名单,白名单和防病毒软件等大量工具来检测网络钓鱼网页。攻击者总是想出创造性的方法来利用人和网络的弱点来渗透网络防御。本文提出了一种使用深度学习方法检测网络钓鱼网页的数据驱动框架。更准确地说,多层感知器(也称为前馈神经网络)用于预测网络钓鱼网页。该数据集是从Kaggle收集的,包含一万个网页的信息。它包含十个属性。所提出的模型已达到95%的训练准确度和93%的测试准确度。

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