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Targeting spam control on middleboxes: Spam detection based on layer-3 e-mail content classification
Authors:Muhammad N. Marsono  M. Watheq El-Kharashi  Fayez Gebali
Affiliation:1. Fakulta riadenia a informatiky, ?ilinská Univerzita v ?iline, Univerzitná 8215/1, ?ilina, 010 26, Slovakia;2. Mathematical Institute of Slovak Academy of Sciences, ?umbierska 1, Banská Bystrica, 974 11, Slovakia;3. University of California, Davis, Linguistics Department, 469 Kerr Hall, One Shields Avenue, Davis, CA 95616, USA;1. Department Computer Science, University of Vigo, ESEI, Campus As Lagoas, 32004, Ourense, Spain;2. Centro de Investigaciones Biomédicas (Centro Singular de Investigación de Galicia), Campus Universitario Lagoas-Marcosende, 36310, Vigo, Spain
Abstract:This paper proposes a spam detection technique, at the packet level (layer 3), based on classification of e-mail contents. Our proposal targets spam control implementations on middleboxes. E-mails are first pre-classified (pre-detected) for spam on a per-packet basis, without the need for reassembly. This, in turn, allows fast e-mail class estimation (spam detection) at receiving e-mail servers to support more effective spam handling on both inbound and outbound (relayed) e-mails. In this paper, the naïve Bayes classification technique is adapted to support both pre-classification and fast e-mail class estimation, on a per-packet basis. We focus on evaluating the accuracy of spam detection at layer 3, considering the constraints on processing byte-streams over the network, including packet re-ordering, fragmentation, overlapped bytes, and different packet sizes. Results show that the proposed layer-3 classification technique gives less than 0.5% false positive, which approximately equals the performance attained at layer 7. This shows that classifying e-mails at the packet level could differentiate non-spam from spam with high confidence for a viable spam control implementation on middleboxes.
Keywords:
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