Phishing Websites Detection Using Data Mining Classification Model

Journal Title: Transactions on Machine Learning and Artificial Intelligence - Year 2015, Vol 3, Issue 4

Abstract

Phishing is a significant security threat to the Internet; it is an electronic online identity theft in which the attackers use spoofing techniques like fake websites that mimic legal websites to trick users into revealing their private information. Many of successful phishing attacks do exist and subsequently a considerable number of anti-phishing methods have been proposed. However, they vary in terms of their accuracy and error rate. This paper proposes an algorithm for phishing websites detection using data mining classification model. It is implemented and experimented using a dataset composed of 20 different webpage features and 1,000 instances. The experimental results showed that the proposed algorithm outperforms the original one in terms of the number of classification rules, accuracy (87%) and less error rate (0.1 %).

Authors and Affiliations

Riad Jabri, Boran Ibrahim

Keywords

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  • EP ID EP278827
  • DOI 10.14738/tmlai.34.1381
  • Views 68
  • Downloads 0

How To Cite

Riad Jabri, Boran Ibrahim (2015). Phishing Websites Detection Using Data Mining Classification Model. Transactions on Machine Learning and Artificial Intelligence, 3(4), 42-51. https://europub.co.uk/articles/-A-278827