A Liang-Kleeman Causality Analysis based on Linear Inverse Modeling
Justin Lien

TL;DR
This paper introduces a new data-driven causality analysis method combining Liang-Kleeman information flow with linear inverse modeling, capable of handling complex stochastic systems and different noise types, applied to climate phenomena.
Contribution
It develops a LIM-based causality approach that models various noise types and captures self and mutual causality, advancing analysis of complex stochastic systems.
Findings
Causality between ENSO and IOD is mutual but asymmetric.
Colored noise reveals a hotspot in the Ni extquotesingle{n}o 3 region.
The approach provides deeper insights into climate causal relationships.
Abstract
Causality analysis is a powerful tool for determining cause-and-effect relationships between variables in a system by quantifying the influence of one variable on another. Despite significant advancements in the field, many existing studies are constrained by their focus on unidirectional causality or Gaussian external forcing, limiting their applicability to complex real-world problems. This study proposes a novel data-driven approach to causality analysis for complex stochastic differential systems, integrating the concepts of Liang-Kleeman information flow and linear inverse modeling. Our method models environmental noise as either memoryless Gaussian white noise or memory-retaining Ornstein-Uhlenbeck colored noise, and allows for self and mutual causality, providing a more realistic representation and interpretation of the underlying system. Moreover, this LIM-based approach can…
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Taxonomy
TopicsConsumer Perception and Purchasing Behavior · Medical Imaging and Analysis · Ocular and Laser Science Research
