Normalized multivariate time series causality analysis and causal graph reconstruction
X. San Liang

TL;DR
This paper introduces a normalized, efficient, and theoretically grounded method for multivariate time series causality analysis, capable of identifying causal relationships, self-influences, and confounding effects even in noisy or synchronized systems.
Contribution
It generalizes information flow-based causality inference to multivariate series, including self-influence quantification and automatic causal graph reconstruction from complex data.
Findings
Accurately reconstructs causal graphs in noisy multivariate data.
Differentiates confounding influences effectively.
Handles nearly synchronized chaotic oscillators successfully.
Abstract
Causality analysis is an important problem lying at the heart of science, and is of particular importance in data science and machine learning. An endeavor during the past 16 years viewing causality as real physical notion so as to formulate it from first principles, however, seems to go unnoticed. This study introduces to the community this line of work, with a long-due generalization of the information flow-based bivariate time series causal inference to multivariate series, based on the recent advance in theoretical development. The resulting formula is transparent, and can be implemented as a computationally very efficient algorithm for application. It can be normalized, and tested for statistical significance. Different from the previous work along this line where only information flows are estimated, here an algorithm is also implemented to quantify the influence of a unit to…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Neural dynamics and brain function · Blind Source Separation Techniques
