JOURNAL ARTICLE

Phishing Website Classification using Least Square Twin Support Vector Machine

Mayank Arya ChandraS. S. BediShashank ChandraSuhail Javed Quraishi

Year: 2019 Journal:   International Journal of Innovative Technology and Exploring Engineering Vol: 9 (1)Pages: 2063-2068   Publisher: Blue Eyes Intelligence Engineering and Sciences Publication

Abstract

Phishing is one among the luring procedures used by phishing attackers in the means to abuse the personal details of clients. Phishing is earnest cyber security issue that includes facsimileing legitimate website to apostatize online users so as to purloin their personal information. Phishing can be viewed as special type of classification problem where the classifier is built from substantial number of website's features. It is required to identify the best features for improving classifiers accuracy. This study, highlights on the important features of websites that are used to classify the phishing website and form the legitimate ones by presenting a scheme Decision Tree Least Square Twin Support Vector Machine (DT-LST-SVM) for the classification of phishing website. UCI public domain benchmark website phishing dataset was used to conduct the experiment on the proposed classifier with different kernel function and calculate the classification accuracy of the classifiers. Computational results show that DT-LST-SVM scheme yield the better classification accuracy with phishing websites classification dataset.

Keywords:
Phishing Support vector machine Classifier (UML) Computer science Decision tree Machine learning Artificial intelligence Random forest Structured support vector machine Data mining The Internet World Wide Web

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Refs
0.48
Citation Normalized Percentile
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Citation History

Topics

Spam and Phishing Detection
Physical Sciences →  Computer Science →  Information Systems
Misinformation and Its Impacts
Social Sciences →  Social Sciences →  Sociology and Political Science

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