Phish-Shelter: A Novel Anti-Phishing Browser Using Fused Machine Learning

Rizwan Ur Rahman, Lokesh Yadav, D. Tomar
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Abstract

Phishing attack is a deceitful attempt to steal the confidential data such as credit card information, and account passwords. In this paper, Phish-Shelter, a novel anti-phishing browser is developed, which analyzes the URL and the content of phishing page. Phish-Shelter is based on combined supervised machine learning model.Phish-Shelter browser uses two novel feature set, which are used to determine the web page identity. The proposed feature sets include eight features to evaluate the obfuscation-based rule, and eight features to identify search engine. Further, we have taken eleven features which are used to discover contents, and blacklist based rule. Phish-Shelter exploited matching identity features, which determines the degree of similarity of a URL with the blacklisted URLs. Proposed features are independent from third-party services such as web browser history or search engines result. The experimental results indicate that, there is a significant improvement in detection accuracy using proposed features over traditional features.
Phish-Shelter:一种使用融合机器学习的新型反网络钓鱼浏览器
网络钓鱼攻击是一种试图窃取信用卡信息、账户密码等机密数据的欺骗行为。本文开发了一种新型的反网络钓鱼浏览器Phish-Shelter,能够对网络钓鱼页面的URL和内容进行分析。Phish-Shelter是基于组合监督机器学习模型。Phish-Shelter浏览器采用了两个新颖的特性集,用来确定网页的身份。提出的特征集包括八个特征来评估基于模糊的规则,以及八个特征来识别搜索引擎。此外,我们还采用了11个用于发现内容的特性,以及基于黑名单的规则。Phish-Shelter利用匹配的身份特征,这决定了URL与黑名单URL的相似程度。提议的功能独立于第三方服务,如web浏览器历史记录或搜索引擎结果。实验结果表明,与传统特征相比,本文提出的特征在检测精度上有显著提高。
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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