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In/Out Traffic Proportion Based Analyses for Network Anomaly Detection

In/Out Traffic Proportion Based Analyses for Network Anomaly Detection. By Zhang FengXiang 2006-07-17. Outline. Research background Traffic analyses for anomaly detection: Based on input/output proportion of traffic Applying GLR test and Bin-test Numerical examples and discussions

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In/Out Traffic Proportion Based Analyses for Network Anomaly Detection

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  1. In/Out Traffic Proportion Based Analyses for Network Anomaly Detection By Zhang FengXiang 2006-07-17

  2. Outline • Research background • Traffic analyses for anomaly detection: • Based on input/output proportion of traffic • Applying GLR test and Bin-test • Numerical examples and discussions • Conclusions & further works

  3. What is the network anomaly • Anomaly: Operations deviate from normal behavior. • What could cause anomaly? • Malfunction of network devices • Network overload • Malicious attacks, like DoS/DDoS attacks • Other network intrusions • Two main kinds of network anomalies. 1. Related to network failures and performance problems. 2. Security-related problems: (1) Resource depletion (2) Bandwidth depletion

  4. Anomaly detection meets troubles • There are many schemes based on checking abrupt traffic changes. • E.g. apply signal processing technique to detect out traffic’s abrupt change • However, this kind of anomaly does not always mean illegitimate. • Abrupt change of traffic does not mean an attack has exactly happened • We call this case as: Legitimately-abrupt-change(LAC)

  5. Legitimately abruptchanges • Example 1: • Famous information gateway websites, e.g. Yahoo. • When bombastic news is announced, it would appear. • Example 2: • Special information announce center, e.g. the website of national meteorological agency • When a nature disaster issaid to be coming, it would occur. • Typhoon, Earthquake, Tsunami • Important outdoor holidays

  6. Existing anomaly detection schemes’ trouble • For those detection schemes based on abrupt changes of the unidirectional traffic: • When legitimately abrupt changes appear, false alarms might appear. • However, the bidirectional traffic would have some kinds of symmetry: • Check the Input/Output traffic proportion. • Test their Generalized Likelihood Ratio (GLR). • Test expected proportion number in each special value range (Bin).

  7. Network Model of Analyzing Input/Output Proportion In Out Near the protected object

  8. In/Out Traffic Proportion Based Analyses In/Out proportion, GLR and Bin test……

  9. Detect abnormal changes of proportion • For existing LACs, we consider bidirectional traffics. • For this case, the Input/Output proportion would not change abruptly as well • It seems be in a relatively narrow range. • Due to the nature of the TCP protocol there is a loose symmetry on the In/Out packet rates. • In the legitimate use of networks, more are the request packets, more are the response packets. • Almost all bandwidth attacks destroy this attribute.

  10. Generalized Likelihood Ratio test • In statistical analysis, network anomalies are modeled as correlated abrupt changes in time series of network data. • GLR shows the likelihood of the residuals in two adjacent windows. • Abrupt changes are detected by comparing the variance in two windows. • When GLR is closer to 1, the data distribution in test window is more likely to happen after the learn window • It is more likely to be anomaly when GLR is smaller then a preset threshold.

  11. How to do GLR test • Get the In/Out proportion sequence • Apply GLR scheme between two adjacent windows:

  12. Calculation of GLR • Abrupt changes in time series data can be modeled using an auto-regressive (AR) process. • Abrupt changes are correlated in time, yet are short-range dependent. • As some other detection schemes, we use an AR process of order 1 here to model the data in a 80-sec window.

  13. W: the length of each window SL, SS: the sample variance of the residual in the learn and test window SP: the pooled sample variance of two adjacent windows : the GLR with the value range (0,1]

  14. The analyzed traffic data • Use 4 traffic sets between the Science Information Network(SINET)and other two commercial Internet exchange service networks, JaPan Internet eXchange(JPIX) and JPNAP. They are bit rates in: 1. 24 hours on 10 Gigabit Ethernet line of JPIX from 17:44 on May 03, 2005. 2. 24 hours on 10 Gigabit Ethernet line of JPIX from 13:06 on March 25, 2004. 3. 4 hours on 10 Gigabit Ethernet line of JPIX from 14:01 to 18:01on March 24, 2004. 4. 24 hours on 10 Gigabit Ethernet line of JPNAP from 17:44 on May 03, 2005.

  15. SINET   JPIX ( 1 day traffic )

  16. The GLR sequence of the bit rate proportion time series between JPIX and SINET

  17. SINET   JPNAP ( 1 day traffic )

  18. The GLR sequence of the bit rate proportion time series between JPNAP and SINET

  19. The percentage distribution of the GLR value • Most GLR values are close to 1, and mostly above 0.8. • This means the distribution of Input/Output traffic proportion is most likely to its former one.

  20. Bin-test scheme • According to proportion data, we can decide several value ranges (bins). • From most frequently appearing value range to the seldom appearing value range • Give the expected number of proportions in each bin under the normal and legitimate case. • Test the data points in the observing window • If not match the expected distribution of the bins, alert.

  21. Proportion of Gigabit Ethernet line of JPIX to SINET March 24/2004(14:01 -> 18:01)

  22. An illustration of Bin-test 5 Get the expected number Niin the ith bin; In higher level bin the Nishould be larger. 1st Most common 4 2nd Most common 3 Count data number niin each bin; Compare ni with Ni. If the deviation exceeds some confidence interval, an anomaly is declared. Normal 2 seldom 1:others never

  23. Bin-test based on Input/Output proportion • Four data sets’ number distribution in 4 bins:

  24. Conclusions and future works • We’ve noticed the effects of the legitimately abrupt changes for anomaly detections. • Showed the bidirectional In/Out traffic monitored for the same networks is close to a constant. • A valuable reference for reduction of false positive alarms in the detection of bandwidth attacks. • Proposed a Bin-test detection method based on traffic analysis. • In the future, • Further study the In/Out traffic proportion constancy. • Simulate DoS/DDoS attacks and apply the detection scheme.

  25. Thank You! Advices?

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