Dr. Phish : Phishing Website Detector

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Abstract

Phishing is a common attack on credulous people by making them disclose their unique information. It is a type of cyber-crime where false sites allure exploited people to give delicate data. This paper deals with methods for detecting phishing websites by analyzing various features of URLs by Machine learning techniques. This experimentation discusses the methods used for detection of phishing websites based on lexical features, host properties and page importance properties. We consider various data mining algorithms for evaluation of the features in order to get a better understanding of the structure of URLs that spread phishing. To protect end users from visiting these sites, we can try to identify the phishing URLs by analyzing their lexical and host-based features. A particular challenge in this domain is that criminals are constantly making new strategies to counter our defense measures. To succeed in this contest, we need Machine Learning algorithms that continually adapt to new examples and features of phishing URLs.

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APA

Kumar, H., Prasad, A., Rane, N., Tamane, N., & Yeole, A. (2021). Dr. Phish : Phishing Website Detector. In E3S Web of Conferences (Vol. 297). EDP Sciences. https://doi.org/10.1051/e3sconf/202129701032

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