Exploring Phishing Detection Using Search Engine Optimization and Uniform Resource Locator based Information
Date
2021-04-29T15:00:04Z
Authors
Ma, Kewei
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Abstract
Phishing attacks are the work of social engineering. They are used to trick users to obtain their sensitive/private information using malicious links, websites, and electronic messages. In this thesis, phishing attack detection is explored using information based on uniform resource locators (URLs) and third-party search engine optimization (SEO) tools. A supervised learning approach is used to detect phishing websites. Evaluations are performed using real-world data and a Decision Tree model, which optimized using the Tree-based Pipeline Optimization Tool (TPOT) via Automated Machine Learning (AutoML). The results obtained are not only better than the state-of-the-art models in the literature, but also achieve a 97% detection rate. To utilize the proposed model, the best-performing pipeline from TPOT is embedded to a web API for future remote access.
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Keywords
Phishing Detection, Machine Learning