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ASTUTE: Detecting a Different Class of Traffic Anomalies Fernando Silveira 1,2, Christophe Diot 1, Nina Taft 3, Ramesh Govindan 4 1 Technicolor 2 UPMC Paris Universitas 3 Intel Labs Berkeley 4 University of Southern California ACM SIGCOMM 2010
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ASTUTE: Detecting a Different Class of Traffic Anomalies A Short-Timescale Uncorrelated-Traffic Equilibrium Comparing to Kalman Filter and Wavelet Analysis, ASTUTE can find anomalies with different features Kalman & Wavelet can detect: few large flows ASTUTE can detect: many small flows
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2010/11/2 Speaker: Li-Ming Chen 3 Outline Motivation & Goal ASTUTE – An Equilibrium Model ASTUTE-based Anomaly Detection Experimental Methodology Performance Evaluation Conclusion & My Comments
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2010/11/2 Speaker: Li-Ming Chen 4 Anomaly Detection Traffic anomalies (in large ISPs & enterprise networks) come from: Malicious activities (e.g., DoS, port scan) Misconfigurations/failures of network components (e.g., link failure, routing problem) Legitimate events (e.g., large file transfers, flash crowds) Anomaly detection: Build a statistical model of normal traffic An anomaly is defined as deviation from the normal model
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2010/11/2 Speaker: Li-Ming Chen 5 Motivation: Challenges in Anomaly Detection Anomaly Detection: Pros: Can detect new anomalies! Cons: Training takes times Training data is never guaranteed to be clean Periodical (re)training is required False alarm Can we detect anomalies without having to learn what is normal?
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2010/11/2 Speaker: Li-Ming Chen 6 Observation Network Traffic show Equilibrium: When many flows are multiplexed on a non-saturated link, their volume changes over short timescales tend to cancel each other out making the average change across flows close to ZERO The equilibrium property Holds if the flows are independent While, is violated by traffic changes caused by several, potentially small, correlated flows ~ traffic anomalies
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2010/11/2 Speaker: Li-Ming Chen 7 Goal Propose a new approach to anomaly detection based on ASTUTE A mathematical model to describe “A Short-Timescale Uncorrelated-Traffic Equilibrium” Advantages: No training – computationally simple and immune to data- poisoning Accurately detects a well-defined class of traffic anomalies Theoretical guarantees on the false positive rates Evaluate the performance against Kalman filter and wavelet analysis
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2010/11/2 Speaker: Li-Ming Chen 8 Outline Motivation & Goal ASTUTE – An Equilibrium Model ASTUTE-based Anomaly Detection Experimental Methodology Performance Evaluation Conclusion & My Comments
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2010/11/2 Speaker: Li-Ming Chen 9 Equilibrium Model Flow: a set of packets that share the same values for a given set of traffic features (e.g., 5-tuple) Binning: use time bin to study the evolution of a flow Flow volume: number of packets in the flow during the corresponding bin Measure flow volume on a link for each time bin bin i bin i+1 … time … flow f starts at time bin s f flow f continued for d f bins flow f ’s volume of each time bin can be represented as a vector: x f,i x f,i+1
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2010/11/2 Speaker: Li-Ming Chen 10 Equilibrium Model: Focus on Volume Changes of Flows bin i bin i+1 … time … flow f ’s volume of each time bin can be represented as a vector: x f,i x f,i+1 F: set of flows that are active in i or i+1 (volume change of f from i to i+1)
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2010/11/2 Speaker: Li-Ming Chen 11 Consequences of the ASTUTE Model Assumptions: (A1) Flow independence (A2) Stationary Theorem 1 (consequences of the ASTUTE) : other Intuition: independent flows cancel each other out
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2010/11/2 Speaker: Li-Ming Chen 12 Outline Motivation & Goal ASTUTE – An Equilibrium Model ASTUTE-based Anomaly Detection Experimental Methodology Performance Evaluation Conclusion & My Comments
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2010/11/2 Speaker: Li-Ming Chen 13 ASTUTE-based Anomaly Detection Method Given: A detection threshold K(p) A pair of consecutive time bins Measure: Set of active flows, F Mean volume change, Variance of volume changes, Compute AAV (ASTUTE Assessment Value) : Flag an alarm if: A toy example : ii+1 No Alarm (copy from author’s slides) 0 +2
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2010/11/2 Speaker: Li-Ming Chen 14 Note: About Volume Changes Requirement: Only consider traffic on non-saturated links, and using short-timescale bins Volume change (for F flows that are active at bin i): Mean: Standard deviation:
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2010/11/2 Speaker: Li-Ming Chen 15 Note: About Detection Threshold For large F, has a (1-p) confidence interval given by the central limit theorem If contains zero, then F satisfies ASTUTE Otherwise, there is an ASTUTE anomaly at time bin i smallest value of K(p) is 1-p conf. interval p/2 K(p)K(p)-K(p) 0 (defined as AAV) < 0> 0
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2010/11/2 Speaker: Li-Ming Chen 16 Note: Situations that ASTUTE is Violated There are 2 possibilities that ASTUTE is violated: (1) false positive Controlled by false positive rate p In a fraction p of the time bins, ASTUTE may be violated by normal traffic (2) Flows violate the model’s assumption: independence & stationary Stationary: Only over the timescale of a typical flow duration Authors study which bin sizes show stationary behavior Independence: Many flows increase/decrease their volumes at the same time!
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2010/11/2 Speaker: Li-Ming Chen 17 Note: Validate Stationary Assumption (A2) Stationary: Depends on timescale (bin size) In the trace: Long scales: daily usage bias Small scales: no bias! We use short timescales to factor out violations of stationarity
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2010/11/2 Speaker: Li-Ming Chen 18 Note: Validate “ Gaussianity ” of AAVs Check distribution similarity Study the impact of packet sampling rate
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2010/11/2 Speaker: Li-Ming Chen 19 Outline Motivation & Goal ASTUTE – An Equilibrium Model ASTUTE-based Anomaly Detection Experimental Methodology Competitors (or collaborator!?): Kalman & Wavelet Inspect anomalies from traffic data and identify their root causes Simulation through anomaly injection Performance Evaluation Conclusion & My Comments
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2010/11/2 Speaker: Li-Ming Chen 20 Kalman & Wavelet (alternative anomaly detectors for comparison purpose) Kalman: a spatio-temporal detector Learning spatial and temporal correlations to predict the next values Its threshold parameter has similar semantics to that of ASTUTE (allowing a direct comparison) [26] A. Soule, K. Salamatian, and N. Taft, “Combining Filtering and Statistical Methods for Anomaly Detection,” in Proc. IMC, 2005. Wavelet: a frequency-based detector Decompose signals into low/medium/high frequency bands The variance of the combined signal (medium & high freq. bands) represents anomalies [2] P. Barford, J. Kline, D. Plonka, and A.Ron, “A Signal Analysis of Network Traffic Anomalies,” In Proc. IMW, 2002.
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2010/11/2 Speaker: Li-Ming Chen 21 Kalman & Wavelet (cont ’ d) Targets of these two detectors: (1) packet volume time series (2) entropy time series of Src. IP (3) entropy time series of Dst. IP (4) entropy time series of Src. Port (5) entropy time series of Dst. port
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2010/11/2 Speaker: Li-Ming Chen 22 Dataset Flow traces from 3 different networks (between research institutions) (public Internet European NRENs) (inside the enterprise network) Flow sampling: 0.1 0.01 NO
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2010/11/2 Speaker: Li-Ming Chen 23 Manual Classification of Anomalies for Root Cause Analysis Goal: To perform “root cause” analysis for the anomalies found by ASTUTE, Kalman, and Wavelet need to know the root cause first Approach: Use information provided by ASTUTE to help the process of manual classification of anomalies in the traffic trace Steps: (1) correlated anomalous flows (2) anomalous flow identification (3) anomalous flow classification (by hand)
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2010/11/2 Speaker: Li-Ming Chen 24 Results of Anomalous Flow Classification Take these as the criteria for labeling the anomalies found in the three traces
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2010/11/2 Speaker: Li-Ming Chen 25 Simulation through Anomaly Injection Benefit: Simulation helps understand how methods trade-off detection rates for false positives (ROC curves) ps: for comparing Kalman and ASTUTE only Approach: For end-host activity: build a set of benchmark anomalies and inject (recreate identified anomalies) For outages: remove related traffic
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2010/11/2 Speaker: Li-Ming Chen 26 Outline Motivation & Goal ASTUTE – An Equilibrium Model ASTUTE-based Anomaly Detection Experimental Methodology Performance Evaluation Conclusion & My Comments
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2010/11/2 Speaker: Li-Ming Chen 27 Number of Anomalies and Anomaly Overlap Small overlap Kalman & Wavelet have more overlap among each other what are these anomalies??
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2010/11/2 Speaker: Li-Ming Chen 28 Anomaly Types (Internet2) Detection capabilities are different
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2010/11/2 Speaker: Li-Ming Chen 29 Anomaly Types (GEANT2 & Corporate) Users characteristics in different networks are different
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2010/11/2 Speaker: Li-Ming Chen 30 Small Detector Overlap (map qualitative properties (types) of the anomalies to their quantitative properties (# flows and packets)) Kalman/Wavelet (few large flow) ASTUTE (several small flow) Less total volume
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2010/11/2 Speaker: Li-Ming Chen 31 Detection Performance Type 1 Type 2 Type 3
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2010/11/2 Speaker: Li-Ming Chen 32 Complementarity of ASTUTE & Kalman After combination, the performance is better!
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2010/11/2 Speaker: Li-Ming Chen 33 Outline Motivation & Goal ASTUTE – An Equilibrium Model ASTUTE-based Anomaly Detection Experimental Methodology Performance Evaluation Conclusion & My Comments
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2010/11/2 Speaker: Li-Ming Chen 34 Conclusion ASTUTE detects anomalies w/o learning the normal behavior Computationally simple and immune to data-poisoning Specializes on strongly correlated flows (several small flow) Limitation: can not find anomalies involving a few large flows But those are easy to find! ASTUTE and Kalman complement each other nicely ASTUTE also provides information that is useful to perform root cause analysis
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