Measurement: Sensors (Feb 2024)

Intrusion detection based on phishing detection with machine learning

  • R. Jayaraj,
  • A. Pushpalatha,
  • K. Sangeetha,
  • T. Kamaleshwar,
  • S. Udhaya Shree,
  • Deepa Damodaran

Journal volume & issue
Vol. 31
p. 101003

Abstract

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Machine learning technique which uses artificial neural networks to learn representations. Phishing is a form of fraud in which the attacker tries to learn credential information from the websites. Web phishing is to steal sensitive information such as usernames, passwords and credit card details by way of impersonating a authorized entity. The Hybrid Ensemble Feature Selection is a new feature selection method for machine learning-based phishing detection systems (HEFS). The first step of HEFS involves using a novel Cumulative Distribution Function gradient (CDF-g) algorithm to generate primary feature subsets, which are then fed into a data perturbation ensemble to generate secondary feature subsets. We present the results of our approach and compare them to a few previous studies, with the paper focusing primarily on phishing urls for detecting the unauthorised one by using phishing detection method.

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