Authors
YuFei Han, Yun Shen
Publication date
2016/4/4
Book
Proceedings of the 31st Annual ACM Symposium on Applied Computing
Pages
2079-2086
Description
There is growing evidence that spear phishing campaigns are increasingly pervasive, sophisticated, and remain the starting points of more advanced attacks. Current campaign identification and attribution process heavily relies on manual efforts and is inefficient in gathering intelligence in a timely manner. It is ideal that we can automatically attribute spear phishing emails to known campaigns and achieve early detection of new campaigns using limited labelled emails as the seeds. In this paper, we introduce four categories of email profiling features that capture various characteristics of spear phishing emails. Building on these features, we implement and evaluate an affinity graph based semi-supervised learning model for campaign attribution and detection. We demonstrate that our system, using only 25 labelled emails, achieves 0.9 F1 score with a 0.01 false positive rate in known campaign attribution, and is …
Total citations
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Scholar articles
YF Han, Y Shen - Proceedings of the 31st Annual ACM Symposium on …, 2016