Causal Discovery using Model Invariance through Knockoff Interventions
- URL: http://arxiv.org/abs/2207.04055v1
- Date: Fri, 8 Jul 2022 14:46:47 GMT
- Title: Causal Discovery using Model Invariance through Knockoff Interventions
- Authors: Wasim Ahmad, Maha Shadaydeh, Joachim Denzler
- Abstract summary: We model nonlinear interactions in time series using DeepAR.
We expose the model to different environments using Knockoffs-based interventions.
We show that the distribution of the response residual does not change significantly upon interventions on non-causal predictors.
- Score: 8.330791157878137
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Cause-effect analysis is crucial to understand the underlying mechanism of a
system. We propose to exploit model invariance through interventions on the
predictors to infer causality in nonlinear multivariate systems of time series.
We model nonlinear interactions in time series using DeepAR and then expose the
model to different environments using Knockoffs-based interventions to test
model invariance. Knockoff samples are pairwise exchangeable, in-distribution
and statistically null variables generated without knowing the response. We
test model invariance where we show that the distribution of the response
residual does not change significantly upon interventions on non-causal
predictors. We evaluate our method on real and synthetically generated time
series. Overall our method outperforms other widely used causality methods,
i.e, VAR Granger causality, VARLiNGAM and PCMCI+.
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