Skip to main content
Back to USENIX
  • Conferences
  • Students
Sign in

USENIX Conference Policies

  • Event Code of Conduct
  • Conference Network Policy
  • Statement on Environmental Responsibility Policy

Joint Data Streaming and Sampling Techniques for Detection of Super Sources and Destinations

Detecting the sources or destinations that have communicated with a large number of distinct destinations or sources during a small time interval is an important problem in network measurement and security. Previous detection approaches are not able to deliver the desired accuracy at high link speeds (10 to 40 Gbps). In this work, we propose two novel algorithms that provide accurate and efficient solutions to this problem. Their designs are based on the insight that sampling and data streaming are often suitable for capturing different and complementary regions of the information spectrum, and a close collaboration between them is an excellent way to recover the complete information. Our first solution builds on the standard hash-based flow sampling algorithm. Its main innovation is that the sampled traffic is further filtered by a data streaming module which allows for much higher sampling rate and hence much higher accuracy. Our second solution is more sophisticated but offers higher accuracy. It combines the power of data streaming in efficiently estimating quantities associated with a given identity, and the power of sampling in collecting a list of candidate identities. The performance of both solutions are evaluated using both mathematical analysis and trace-driven experiments on real-world Internet traffic.

Qi (George) Zhao, Georgia Institute of Technology

Abhishek Kumar, Georgia Institute of Technology

Jun (Jim) Xu, Georgia Institute of Technology

BibTeX
@inproceedings {269211,
author = {Qi (George) Zhao and Abhishek Kumar and Jun (Jim) Xu},
title = {Joint Data Streaming and Sampling Techniques for Detection of Super Sources and Destinations},
booktitle = {Internet Measurement Conference 2005 (IMC 05)},
year = {2005},
address = {Berkeley, CA},
url = {https://www.usenix.org/conference/imc-05/joint-data-streaming-and-sampling-techniques-detection-super-sources-and},
publisher = {USENIX Association},
month = oct
}
Download

Links

Paper: 
http://usenix.org/events/imc05/tech/full_papers/zhao/zhao.pdf
Paper (HTML): 
http://usenix.org/events/imc05/tech/full_papers/zhao/zhao_html/index.html
  • Log in or register to post comments

© USENIX
EIN 13-3055038

  • Privacy Policy
  • Contact Us