English

Dictionary Based Pattern Entropy for Causal Direction Discovery

Machine Learning 2026-03-06 v1 Information Theory Machine Learning math.IT

Abstract

Discovering causal direction from temporal observational data is particularly challenging for symbolic sequences, where functional models and noise assumptions are often unavailable. We propose a novel \emph{Dictionary Based Pattern Entropy (DPEDPE)} framework that infers both the direction of causation and the specific subpatterns driving changes in the effect variable. The framework integrates \emph{Algorithmic Information Theory} (AIT) and \emph{Shannon Information Theory}. Causation is interpreted as the emergence of compact, rule based patterns in the candidate cause that systematically constrain the effect. DPEDPE constructs direction-specific dictionaries and quantifies their influence using entropy-based measures, enabling a principled link between deterministic pattern structure and stochastic variability. Causal direction is inferred via a minimum-uncertainty criterion, selecting the direction exhibiting stronger and more consistent pattern-driven organization. As summarized in Table 7, DPEDPE consistently achieves reliable performance across diverse synthetic systems, including delayed bit-flip perturbations, AR(1) coupling, 1D skew-tent maps, and sparse processes, outperforming or matching competing AIT-based methods (ETCEETC_E, ETCPETC_P, LZPLZ_P). In biological and ecological datasets, performance is competitive, while alternative methods show advantages in specific genomic settings. Overall, the results demonstrate that minimizing pattern level uncertainty yields a robust, interpretable, and broadly applicable framework for causal discovery.

Keywords

Cite

@article{arxiv.2603.04473,
  title  = {Dictionary Based Pattern Entropy for Causal Direction Discovery},
  author = {Harikrishnan N B and Shubham Bhilare and Aditi Kathpalia and Nithin Nagaraj},
  journal= {arXiv preprint arXiv:2603.04473},
  year   = {2026}
}

Comments

13 pages

R2 v1 2026-07-01T11:03:45.885Z