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ZHANG, R. ZHU, L. LI, X. PANG, S. SARRAFZADEH, A. KOMOSNÝ, D.
Original Title
Behavior Based Darknet Traffic Decomposition for Malicious Events Identification
Type
conference paper
Language
English
Original Abstract
This paper proposes a host (corresponding to a source IP) behavior based traffic decomposition approach to identify groups of malicious events from massive historical darknet traffic. In our approach, we segmented and extracted traffic flows from captured darknet data, and categorized flows according to a set of rules that summarized from host behavior observations. Finally, significant events are appraised by three criteria: a) the activities within each group should be highly alike; b) the activities should have enough significance in terms of scan scale; and c) the group should be large enough. We applied the approach on a selection of twelve months darknet traffic data for malicious events detection, and the performance of the proposed method has been evaluated.
Keywords
Internet; Darknet; DDoS; Malicious; Events
Authors
ZHANG, R.; ZHU, L.; LI, X.; PANG, S.; SARRAFZADEH, A.; KOMOSNÝ, D.
Released
9. 11. 2015
ISBN
978-3-319-26555-1
Book
Neural Information Processing: 22nd International Conference, ICONIP 2015
Pages from
251
Pages to
260
Pages count
10
BibTex
@inproceedings{BUT141093, author="Ruibin {ZHANG} and Lei {ZHU} and Xiaosong {LI} and Shaoning {Pang} and Abdolhossein {SARRAFZADEH} and Dan {Komosný}", title="Behavior Based Darknet Traffic Decomposition for Malicious Events Identification", booktitle="Neural Information Processing: 22nd International Conference, ICONIP 2015", year="2015", pages="251--260", doi="10.1007/978-3-319-26555-1\{_}29", isbn="978-3-319-26555-1" }