1. Soysal M, Schmidt E G. Machine learning algorithms for accurate flow-based network traffic classification: Evaluation and comparison. Performance Evaluation, 2010, 67(6): 451-467
2. Dainotti A, Pescapé A. Issues and future directions in traffic classification. IEEE Network, 2012, 26(1): 35-40
3. Erman J, Mahanti A, Arlitt M. Byte me: A case for byte accuracy in traffic classification. Proceedings of the 3rd Annual ACM Workshop on Mining Network Data (MineNet’07), Jun 12-16, 2007, San Diego, CA, USA. New York, NY, USA: ACM, 2007: 35-38
4. Hurley J, Garcia-Palacios E, Sezer S. Host-based P2P flow identification and use in real-time. ACM Transactions on the Web, 2011, 5(2): 7-34
5. He H T, Che C H, Ma F T, et al. Improve flow accuracy and byte accuracy in network traffic classification. Proceedings of the 4th International Conference on Intelligent Computing (ICIC’08), Sep 15-18, 2008, Shanghai, China.2008: 449-458
6. Batista G E A P A, Prati R C, Monard M C. A study of the behavior of several methods for balancing machine learning training data. ACM SIGKDD Explorations Newsletter, 2004, 6(1): 20-29
7. Callado A, Kamienski C, Szabó G, et al. A survey on Internet traffic identification. IEEE Communications Surveys & Tutorials, 2009, 11(3): 37-52
8. Moore A W, Zuev D. Internet traffic classification using Bayesian analysis techniques. Proceedings of the 2005 ACM SIGMETRICS International Conference on Measurement and Modeling of Computer Systems (SIGMETRICS’05), Jun 6-10, 2005, Banff, Canada. New York, NY, USA: ACM, 2005: 50-60
9. Bernaille L, Teixeira R, Akodkenou I, et.al. Traffic classification on the fly. Computer Communication Review (ACM SIGCOMM), 2006, 36(2): 23-26
10. Zander S, Nguyen T, Armitage G. Automated traffic classification and application identification using machine learning. Proceedings of the 30th IEEE Conference on Local Computer Networks (LCN’05), Nov 15-17, 2005, Sydney, Australia. Piscataway, NJ, USA: IEEE, 2005: 250-257
11. Alshammari R, Zincir-Heywood A N. Can encrypted traffic be identified without port number, IP address and payload inspection? Computer Networks, 2011, 55(6):1326-1350
12. Zhang J, Chen C, Xiang Y, et al. An effective network traffic classification method with unknown flow detection. IEEE Transactions on Network and Service Management, 2013, 10(2): 133-147
13. Li W, Canini M, Moore A W, et. al. Efficient application identification and the temporal and spatial stability of classification schema. Computer Networks, 2009, 53(6):790-809
14. Hjelmvik E, John W. Breaking and improving protocol obfuscation. Technical Report. Gothenburg, Sweden: Department of Computer Science and Engineering, Chalmers University of Technology, 2010
15. Yuan R X, Z Li, Guan X H, et al. An SVM-based machine learning method for accurate Internet traffic classification. Information Systems Frontiers, 2008, 12(2):149-156
16. Jin Y, Duffield N, Erman J, et al. A modular machine learning system for flow-level traffic classification in large networks. ACM Transactions on Knowledge Discovery from Data, 2012, 6(1): article 4
17. Moore A W, Zuev D, Crogan M. Discriminators for use in flow-based classification. Technical Report, RR-05-13. London, UK: Department of Computer Science, Queen Mary, University of London, 2005
18. Hall M A. Correlation-based feature selection for machine learning.Ph D thesis. Hamilton,New Zealand: Waikato University, 1999
19. Gringoli F, Salgarelli L, Dusi M, et.al. GT: Picking up the truth from the ground for Internet traffic. Computer Communication Review (ACM SIGCOMM), 2009, 39(5):13-18
20. Dusi M, Este A, Gringoli F, et. al. Using GMM and SVM-based techniques for the classification of SSH-encrypted traffic. Proceedings of the IEEE International Conference on Communications (ICC’09), Jun 14-18, 2009, Dresden, Germany. Piscataway, NJ, USA: IEEE, 2009: 6p
21. Lee S, Kim H, Barman D, et al. NeTraMark: A network traffic classification benchmark. Computer Communication Review(ACM SIGCOMM), 2011, 41(1): 23-30
22. Denil M, Trappenberg T. Overlap versus Imbalance. Proceedings of the 23rd Canadian Conference on Advances in Artificial Intelligence (AI’10), Ottawa, Canada, 2010: 220-231
23. Quinlan J R. C4.5: Programs for machine learning. San Francisco, CA, USA: Morgan Kaufmann,1993
Williams N, Zander S, Armitrage G. A preliminary performance comparison of five machine learning algorithms for practical IP traffic flow classification. Computer Communication Review (ACM SIGCOMM), 2006, 36(5): 5-15 |