Probabilistic Easy Variational Causal Effect
Usef Faghihi, Amir Saki

TL;DR
This paper introduces PEACE, a novel measure for assessing direct causal effects in continuous and discrete settings, leveraging total variation and flux concepts to handle complex causal inference problems.
Contribution
It develops the PEACE measure for causal effect estimation, generalizes it for discrete cases, and analyzes its properties and stability, advancing causal inference methodology.
Findings
PEACE effectively measures direct causal effects in continuous variables.
PEACE is compatible with discrete and continuous cases.
The measure is stable under small perturbations.
Abstract
Let and be random vectors, and . In this paper, on the one hand, for the case that and are continuous, by using the ideas from the total variation and the flux of , we develop a point of view in causal inference capable of dealing with a broad domain of causal problems. Indeed, we focus on a function, called Probabilistic Easy Variational Causal Effect (PEACE), which can measure the direct causal effect of on with respect to continuously and interventionally changing the values of while keeping the value of constant. PEACE is a function of , which is a degree managing the strengths of probability density values . On the other hand, we generalize the above idea for the discrete case and show its compatibility with the continuous case. Further, we investigate some properties of PEACE using measure theoretical concepts.…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Philosophy and History of Science · Bayesian Modeling and Causal Inference
MethodsFocus · Causal inference
