Personal Email Networks: An Effective Anti-Spam Tool
P. Oscar Boykin, Vwani Roychowdhury

TL;DR
This paper introduces an automated graph-based method that uses personal email networks to effectively distinguish spam from legitimate emails without user intervention, achieving high accuracy and no false negatives.
Contribution
The work presents a novel, unsupervised algorithm leveraging social network properties of email headers to identify trusted contacts and spam, enhancing anti-spam tools.
Findings
Classified approximately 53% of emails with 100% accuracy.
No false negatives in spam detection.
Requires no user intervention or supervised training.
Abstract
We provide an automated graph theoretic method for identifying individual users' trusted networks of friends in cyberspace. We routinely use our social networks to judge the trustworthiness of outsiders, i.e., to decide where to buy our next car, or to find a good mechanic for it. In this work, we show that an email user may similarly use his email network, constructed solely from sender and recipient information available in the email headers, to distinguish between unsolicited commercial emails, commonly called "spam", and emails associated with his circles of friends. We exploit the properties of social networks to construct an automated anti-spam tool which processes an individual user's personal email network to simultaneously identify the user's core trusted networks of friends, as well as subnetworks generated by spams. In our empirical studies of individual mail boxes, our…
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Taxonomy
TopicsSpam and Phishing Detection · Internet Traffic Analysis and Secure E-voting · Complex Network Analysis Techniques
