Social Networking

Volume 7, Issue 2 (April 2018)

ISSN Print: 2169-3285   ISSN Online: 2169-3323

Google-based Impact Factor: 1.07  Citations  

Artificial Neural Network for Websites Classification with Phishing Characteristics

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DOI: 10.4236/sn.2018.72008    1,502 Downloads   3,930 Views  Citations

ABSTRACT

Several threats are propagated by malicious websites largely classified as phishing. Its function is important information for users with the purpose of criminal practice. In summary, phishing is a technique used on the Internet by criminals for online fraud. The Artificial Neural Networks (ANN) are computational models inspired by the structure of the brain and aim to simu-late human behavior, such as learning, association, generalization and ab-straction when subjected to training. In this paper, an ANN Multilayer Per-ceptron (MLP) type was applied for websites classification with phishing cha-racteristics. The results obtained encourage the application of an ANN-MLP in the classification of websites with phishing characteristics.

Share and Cite:

Ferreira, R. , Martiniano, A. , Napolitano, D. , Romero, M. , De Oliveira Gatto, D. , Farias, E. and Sassi, R. (2018) Artificial Neural Network for Websites Classification with Phishing Characteristics. Social Networking, 7, 97-109. doi: 10.4236/sn.2018.72008.

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