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Summary

We introduce new metrics, penchants and leanings, for causal inference in time series. These novel measures offer a simpler, model-agnostic approach to understanding time series causality.

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Area of Science:

  • Statistics
  • Time Series Analysis
  • Causal Inference

Background:

  • Causal inference from time series data is crucial for understanding dynamic systems.
  • Existing methods often rely on complex models or embedding procedures, limiting interpretability.
  • There is a need for computationally straightforward and model-agnostic causal inference tools.

Purpose of the Study:

  • To introduce novel quantities, penchants and leanings, for exploratory causal inference in bivariate time series.
  • To provide a clearer interpretation of causal relationships compared to existing methods.
  • To develop a computationally efficient and model-independent approach.

Main Methods:

  • Development of new probabilistic quantities: penchants and leanings.
  • Computation based on a structured method for calculating probabilities.
  • Application to bivariate time series without assuming underlying data-generating models or using embedding.

Main Results:

  • Penchants and leanings are computationally straightforward to apply.
  • These quantities directly follow from probabilistic causality assumptions.
  • They do not depend on time series models or embedding procedures, potentially enhancing result interpretability.

Conclusions:

  • Penchants and leanings offer a promising new avenue for exploratory causal inference in time series.
  • The model-agnostic and computationally simple nature facilitates broader application and understanding.
  • These metrics provide a valuable alternative to existing, more complex time series causality tools.