3.9 Article Proceedings Paper

A novel approach of mining write-prints for authorship attribution in e-mail forensics

Journal

DIGITAL INVESTIGATION
Volume 5, Issue -, Pages S42-S51

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.diin.2008.05.001

Keywords

E-mail forensic analysis; Authorship identification; Data mining; Write-print; Frequent itemsets

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There is an alarming increase in the number of cybercrime incidents through anonymous e-mails. The problem of e-mail authorship attribution is to identify the most plausible author of an anonymous e-mail from a group of potential suspects. Most previous contributions employed a traditional classification approach, such as decision tree and Support Vector Machine (SVM), to identify the author and studied the effects of different writing style features on the classification accuracy. However, little attention has been given on ensuring the quality of the evidence. In this paper, we introduce an innovative data mining method to capture the write-print of every suspect and model it as combinations of features that occurred frequently in the suspect's e-mails. This notion is called frequent pattern, which has proven to be effective in many data mining applications, but it is the first time to be applied to the problem of authorship attribution. Unlike the traditional approach, the extracted write-print by our method is unique among the suspects and, therefore, provides convincing and credible evidence for presenting it in a court of law. Experiments on real-life e-mails suggest that the proposed method can effectively identify the author and the results are supported by a strong evidence. (c) 2008 Digital Forensic Research Workshop. Published by Elsevier Ltd. All rights reserved.

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