AI Based Phishing Detection Techniques: A Comparative Analysis of Model Performance

Authors

  • Martha Lerveos Microsoft software engineer, Independent Researcher Author

Keywords:

Phishing detection, artificial intelligence, machine learning, deep learning

Abstract

Phishing attacks continue to pose significant threats to cybersecurity, targeting individuals, businesses, and organizations worldwide. In response, researchers and practitioners have turned to artificial intelligence (AI) techniques to enhance phishing detection capabilities. This paper presents a comparative analysis of AI-based phishing detection techniques, evaluating the performance of various machine learning (ML) and deep learning (DL) models in identifying phishing attempts. The study explores a diverse range of features, including lexical, visual, and behavioral characteristics extracted from phishing emails and websites. The findings contribute to the understanding of the strengths and limitations of AI-based phishing detection approaches, offering insights into the most effective techniques for mitigating phishing threats in various contexts. Additionally, the study identifies areas for future research and development, such as the integration of ensemble learning methods and the incorporation of explainable AI techniques to enhance model interpretability and transparency. Overall, this comparative analysis provides valuable guidance for cybersecurity practitioners and decision-makers in selecting and deploying AI-based phishing detection solutions to bolster their defenses against evolving cyber threats.

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Published

2026-01-16

Issue

Section

Articles

How to Cite

AI Based Phishing Detection Techniques: A Comparative Analysis of Model Performance (Martha Lerveos, Trans.). (2026). Unique Journal of Artificial Intelligence, 4(1), 64-74. https://uniquespublisher.com/index.php/UJAI/article/view/26