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Granger Causality for Time-Series Anomaly Detection By Zhangzhou.

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Presentation on theme: "Granger Causality for Time-Series Anomaly Detection By Zhangzhou."— Presentation transcript:

1 Granger Causality for Time-Series Anomaly Detection By Zhangzhou

2 Introduction&Background Time-Series Data Conception & Examples & Features

3 Time-Series Model Static model Y t = β 0 + β z t + μ t Finite Distributed Lag model,FDL gfr t = α 0 + ξ 0 pe t + ξ 1 pe t-1 + ξ 2 pe t-2 + μ t

4 Multivariate time series Vector Auto-Regression(VAR)

5 Granger Causality For a VAR(p)

6 Problem Definition There usually exist two types of anomalies in multivariate time-series data : “univariate anomaly” and “dependency anomaly” Solution : investigate Granger graphical models,which uncover the temporal dependencies between variables

7 The Lasso Granger Method λ is the penalty parameter, the Xi Granger causers Xj if at least one value in βis nonzero by statistical significant tests.

8 Granger Graphical Models for Anomaly Detection

9 Detection of dependency anomaly(GGM) Learning temporal causal graph of D(b) by regularization Computing the anomaly scores of D(b) using KL-divergence Determining anomaly by threshold cutoff

10 Learning temporal causal graphs Null hypothesis : the temporal causal graphs of reference set and test set are the same, we can use the temporal graphs as additional constraint in Lasso-Granger algorithm

11 Procedure Lasso-Granger(X,T)

12 Computing anomaly scores Kullback-Leibler(KL) divergence, for a particular time-series Xi, we can define its anomaly score as follows:

13 Determine anomaly by threshold cutoff and Slide a window through the reference data and calculate the anomaly scores for each window. Then use the scores to approximate the distribution of the anomaly scores and use the α-quantile of this distribution as threshold cutoff.

14 Experiments

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