Effective Classification of Phishing Web Pages Based on New Rules by Using Extreme Learning Machines
Öz
Internet
is an essential part of our life. Internet users can beaffectedfrom different
types of cyber threats. Thus cyber threats may attack financial data, private
information, online banking and e-commerce. Phishing is a type of cyber threats
that is targeting to get private information such as credit cards information
and social security numbers. There is not a specific solution that can detect
whole phishing attacks. In this study, we proposed an intelligent model for
detecting phishing web pages based on Extreme Learning Machine. Types of web
pages are different in terms of their features. Hence, we must use a specific web
page features set to prevent phishing attacks. We proposed a model based on
machine learning techniques to detect phishing web pages.We have suggested some
new rules to have efficient features. The model has 30 inputs and 1 output. In
this application, the 10-fold cross-validation test has been performed. The
average classification accuracy was measured as 95.05%.
Anahtar Kelimeler
Kaynakça
- [1] G. Spanos and L. Angelis, "The impact of information security events to the stock market: A systematic literature review", Computers & Security, 58, pp.216-229, 2016.
- [2] M. Aburrous, M. Hossain, K. Dahal and F. Thabtah, "Intelligent phishing detection system for e-banking using fuzzy data mining", Expert Systems with Applications, 37(12), pp.7913-7921, 2010.
- [3] N. Abdelhamid, A. Ayesh and F. Thabtah, "Phishing detection based Associative Classification data mining", Expert Systems with Applications, 41(13), pp.5948-5959, 2014.
- [4] S. Wu, P. Wang, X. Li and Y. Zhang, "Effective detection of android malware based on the usage of data flow APIs and machine learning", Information and Software Technology, 75, pp.17-25, 2016.
- [5] M. Kaytan and D. Hanbay, "Kurumsal Bilgi Güvenliğine Yönelik Tehditler ve Alınması Önerilen Tedbirler", 1st International Symposium on Digital Forensics and Security, ISDFS’13, pp.267-270, 2013, Fırat University, Elazığ.
- [6] H. Shahriar and M. Zulkernine, "Trustworthiness testing of phishing websites: A behavior model-based approach", Future Generation Computer Systems, 28(8), pp.1258-1271, 2012.
- [7] R. M. Mohammad, F. Thabtah and L. McCluskey, "Tutorial and critical analysis of phishing websites methods", Computer Science Review, 17, pp.1-24, 2015.
- [8] M. Alsharnouby, F. Alaca and S. Chiasson, "Why phishing still works: User strategies for combating phishing attacks", International Journal of Human-Computer Studies, 82, pp.69-82, 2015.
Ayrıntılar
Birincil Dil
İngilizce
Konular
-
Bölüm
Araştırma Makalesi
Yayımlanma Tarihi
1 Haziran 2017
Gönderilme Tarihi
9 Ağustos 2017
Kabul Tarihi
25 Mayıs 2017
Yayımlandığı Sayı
Yıl 2017 Cilt: 2 Sayı: 1
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