Litcius/Paper detail

Detection of Phishing Websites using Machine Learning

Abdul Razaque, Mohamed Ben Haj Frej, Dauren Sabyrov, Aidana Shaikhyn, Fathi Amsaad, Ahmed Oun

202020 citationsDOI

Abstract

Phishing sends malicious links or attachments through emails that can perform various functions, including capturing the victim's login credentials or account information. These emails harm the victims, cause money loss, and identity theft. In this paper, we contribute to solving the phishing problem by developing an extension for the Google Chrome web browser. In the development of this feature, we used JavaScript PL. To be able to identify and prevent the fishing attack, a combination of Blacklisting and semantic analysis methods was used. Furthermore, a database for phishing sites is generated, and the text, links, images, and other data on-site are analyzed for pattern recognition. Finally, our proposed solution was tested and compared to existing approaches. The results validate that our proposed method is capable of handling the phishing issue substantially.

Topics & Concepts

PhishingLoginBlacklistingComputer scienceIdentity theftWorld Wide WebJavaScriptBlacklistComputer securityAuthentication (law)The InternetInternet privacySpam and Phishing DetectionUser Authentication and Security SystemsAdvanced Malware Detection Techniques