
TL;DR
This paper introduces a non-parametric, computationally efficient method to infer and quantify causal dependence between symbolic data streams without restrictive assumptions, enabling more accurate causal network analysis.
Contribution
It presents a novel causality test based on generalized probabilistic automata that captures a wide class of causal dependencies without assuming linearity or specific dynamical structures.
Findings
The method accurately infers causal relationships in symbolic data.
It outperforms correlation analysis in revealing causal networks.
Applied to Google Trends data, it identified key causal keywords.
Abstract
While correlation measures are used to discern statistical relationships between observed variables in almost all branches of data-driven scientific inquiry, what we are really interested in is the existence of causal dependence. Designing an efficient causality test, that may be carried out in the absence of restrictive pre-suppositions on the underlying dynamical structure of the data at hand, is non-trivial. Nevertheless, ability to computationally infer statistical prima facie evidence of causal dependence may yield a far more discriminative tool for data analysis compared to the calculation of simple correlations. In the present work, we present a new non-parametric test of Granger causality for quantized or symbolic data streams generated by ergodic stationary sources. In contrast to state-of-art binary tests, our approach makes precise and computes the degree of causal dependence…
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Taxonomy
TopicsBayesian Modeling and Causal Inference
