减轻Web中的跨站点请求伪造威胁

A. Khade, Janani S. Iyer, Manoj Inbarajan, Vinay Yadav
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引用次数: 1

摘要

本研究的重点是开发一个web浏览器扩展,旨在检测和防止网络钓鱼攻击和跨站点请求伪造(CSRF)漏洞。该扩展使用HTML, CSS和JavaScript构建,并结合了使用随机森林算法训练的机器学习模型。选择该算法的原因是与其他测试模型相比,该算法具有较高的准确率。扩展的主要功能是扫描潜在漏洞的网站链接,并为用户提供针对网络钓鱼攻击的实时保护。这是通过使用经过训练的机器学习模型来分析网站的各种特征,并确定它是否对用户的安全构成风险来实现的。除了提供网络钓鱼保护外,该扩展还通过防止以用户的名义执行未经授权的操作,提供对跨站点请求伪造攻击的防御。这是通过验证传入请求的真实性并确保只有受信任的源才能执行操作来实现的。总体而言,本研究旨在提供一个全面的解决方案,以保护用户在浏览网页时免受网络钓鱼攻击和跨站点请求伪造漏洞的侵害。web扩展是用户友好的,易于安装,使其访问到广泛的用户。
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Mitigating Cross-Site Request Forgery Threats in the Web
This study focuses on the development of a web browser extension designed to detect and prevent phishing attacks and Cross-Site Request Forgery (CSRF) vulnerabilities. The extension is built using HTML, CSS, and JavaScript and incorporates a machine learning model that was trained using the random forest algorithm. This algorithm was selected due to its high accuracy in comparison to other models tested. The primary function of the extension is to scan a website link for potential vulnerabilities and provide users with real-time protection against phishing attacks. This is achieved by using the trained machine learning model to analyze various characteristics of the website and determine if it poses a risk to the user's security. In addition to providing phishing protection, the extension also offers defense against Cross-Site Request Forgery attacks by preventing unauthorized actions from being executed on a user's behalf. This is achieved by verifying the authenticity of incoming requests and ensuring that only trusted sources are able to execute actions. Overall, this study intends to provide a comprehensive solution for protecting users against phishing attacks and cross-site request forgery vulnerabilities while browsing the web. The web extension is user-friendly and easy to install, making it accessible to a wide range of users.
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