Modelling of an Adaptive Network Model for Phishing Website Detection Using Learning Approaches

A. Tenis, S. R
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Abstract

Phishing links are spread via text messages, social media platforms, and email by phishing attackers. Social engineering skills are used to visit phishing websites to trick the users and enter critical information related to personal data. The confidential data is stolen to defraud legitimate financial institutions or general websites for illegally attaining the benefits. Many machine learning-based solutions are in the enhancements and the technology of machine learning applications to detect the suggested phishing. The rules are used for a solution which depends on the extracted features, and few features require to lies on the services of third-party that, creating time-consuming and instability in the service of prediction. A deep learning-based framework is suggested to detect website of phishing. A framework is established to determine if there is a risk of phishing in real-time during the web page is visited by the user to give a message of warming by the browser plug-in. The prediction service in real-time merges the various techniques for enhancing the accuracy to lower the fake alarm rates and the time of computation which has the filtering whitelist, interception of the blacklist, and prediction of deep learning (DL). Various models of deep learning are compared using the different datasets in the module of machine learning prediction. The greatest accuracy is obtained as 99.18% by the adaptive Recurrent Neural Networks (a−RNN) model from the results of experiments to demonstrate the suggested feasibility solution.
基于学习方法的自适应网络钓鱼网站检测模型建模
网络钓鱼链接由网络钓鱼攻击者通过短信、社交媒体平台和电子邮件传播。社会工程技术被用来访问网络钓鱼网站,欺骗用户并输入与个人数据相关的关键信息。窃取机密资料,骗取合法金融机构或一般网站非法获取利益。许多基于机器学习的解决方案都在增强机器学习应用程序的技术,以检测建议的网络钓鱼。这些规则用于依赖于提取的特征的解决方案,并且很少有特征需要依赖于第三方的服务,这在预测服务中造成了耗时和不稳定。提出了一种基于深度学习的网络钓鱼网站检测框架。建立一个框架,在用户访问网页的过程中实时判断是否存在网络钓鱼的风险,通过浏览器插件给出警示信息。实时预测服务融合了各种提高准确率的技术,以降低假警率和计算时间,其中包括过滤白名单、拦截黑名单和深度学习预测。在机器学习预测模块中,使用不同的数据集对各种深度学习模型进行了比较。实验结果表明,自适应递归神经网络(a - RNN)模型的准确率最高,达到99.18%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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