Robust inference of causality in high-dimensional dynamical processes from the Information Imbalance of distance ranks

05/18/2023
by   Vittorio Del Tatto, et al.
0

We introduce an approach which allows inferring causal relationships between variables for which the time evolution is available. Our method builds on the ideas of Granger Causality and Transfer Entropy, but overcomes most of their limitations. Specifically, our approach tests whether the predictability of a putative driven system Y can be improved by incorporating information from a potential driver system X, without making assumptions on the underlying dynamics and without the need to compute probability densities of the dynamic variables. Causality is assessed by a rigorous variational scheme based on the Information Imbalance of distance ranks, a recently developed statistical test capable of inferring the relative information content of different distance measures. This framework makes causality detection possible even for high-dimensional systems where only few of the variables are known or measured. Benchmark tests on coupled dynamical systems demonstrate that our approach outperforms other model-free causality detection methods, successfully handling both unidirectional and bidirectional couplings, and it is capable of detecting the arrow of time when present. We also show that the method can be used to robustly detect causality in electroencephalography data in humans.

READ FULL TEXT
research
11/18/2021

Information-theoretic formulation of dynamical systems: causality, modeling, and control

The problems of causality, modeling, and control for chaotic, high-dimen...
research
03/22/2019

Impulse Response and Granger Causality in Dynamical Systems with Autoencoder Nonlinear Vector Autoregressions

Sometimes knowing the future given the present is not enough. For sound ...
research
10/13/2021

Fourier-domain transfer entropy spectrum

We propose the Fourier-domain transfer entropy spectrum, a novel general...
research
10/17/2015

Robust Non-linear Wiener-Granger Causality For Large High-dimensional Data

Wiener-Granger causality is a widely used framework of causal analysis f...
research
06/25/2014

Causality Networks

While correlation measures are used to discern statistical relationships...
research
09/25/2015

Validity of time reversal for testing Granger causality

Inferring causal interactions from observed data is a challenging proble...
research
06/23/2020

Inferring Causal Networks of Dynamical Systems through Transient Dynamics and Perturbation

Inferring causal relations from time series measurements is an ill-posed...

Please sign up or login with your details

Forgot password? Click here to reset