Deep Learning-based Group Causal Inference in Multivariate Time-series
Abstract
Causal inference in a nonlinear system of multivariate timeseries is instrumental in disentangling the intricate web of relationships among variables, enabling us to make more accurate predictions and gain deeper insights into real-world complex systems. Causality methods typically identify the causal structure of a multivariate system by considering the cause-effect relationship of each pair of variables while ignoring the collective effect of a group of variables or interactions involving more than two-time series variables. In this work, we test model invariance by group-level interventions on the trained deep networks to infer causal direction in groups of variables, such as climate and ecosystem, brain networks, etc. Extensive testing with synthetic and real-world time series data shows a significant improvement of our method over other applied group causality methods and provides us insights into real-world time series. The code for our method can be found at:https://github.com/wasimahmadpk/gCause.
Cite
@article{arxiv.2401.08386,
title = {Deep Learning-based Group Causal Inference in Multivariate Time-series},
author = {Wasim Ahmad and Maha Shadaydeh and Joachim Denzler},
journal= {arXiv preprint arXiv:2401.08386},
year = {2024}
}
Comments
Accepted in AAAI24 (AI4TS)