Title of article
Detection of fraudulent emails by employing advanced feature abundance
Author/Authors
Nizamani, Sarwat University of Southern - The Mærsk McKinney Møller Institute, Denmark , Nizamani, Sarwat University of Sindh, Pakistan , Memon, Nasrullah University of Southern - The Mærsk McKinney Møller Institute, Denmark , Memon, Nasrullah Mehran University of Engineering and Technology, Pakistan , Glasdam, Mathies University of Southern - The Mærsk McKinney Møller Institute, Denmark , Nguyen, Dong Duong University of Southern, Denmark - The Mærsk McKinney Møller Institute, Denmark
From page
169
To page
174
Abstract
Abstract In this paper,we present a fraudulent email detection model using advanced feature choice. We extracted various kinds of features and compared the performance of each category of features with the others in terms of the fraudulent email detection rate. The different types of features are incorporated step by step. The detection of fraudulent email has been considered as a classification problem and it is evaluated using various state-of-the art algorithms and on CCM (Nizamani et al.,2011) [1] which is authors previous cluster based classification model. The experiments have been performed on diverse feature sets and the different classification methods. The comparison of the results is also presented and the evaluation show that for the fraudulent email detection tasks,the feature set is more important regardless of classification method. The results of the study suggest that the task of fraudulent emails detection requires the better choice of feature set; while the choice of classification method is of less importance. © 2014 Production and hosting by Elsevier B.V.
Keywords
CCM , Classification , Feature set , Fraudulent emails , Spam emails
Journal title
Egyptian Informatics Journal
Journal title
Egyptian Informatics Journal
Record number
2620957
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