Asymmetric predictability in causal discovery: an information theoretic approach

Causal investigations in observational studies pose a great challenge in research where randomized trials or intervention-based studies are not feasible. We develop an information geometric causal discovery and inference framework of "predictive asymmetry". For , predictive asymmetry enables assessment of whether is more likely to cause or vice-versa. The asymmetry between cause and effect becomes particularly simple if and are deterministically related. We propose a new metric called the Directed Mutual Information () and establish its key statistical properties. is not only able to detect complex non-linear association patterns in bivariate data, but also is able to detect and infer causal relations. Our proposed methodology relies on scalable non-parametric density estimation using Fourier transform. The resulting estimation method is manyfold faster than the classical bandwidth-based density estimation. We investigate key asymptotic properties of the methodology and a data-splitting technique is utilized to facilitate causal inference using the . Through simulation studies and an application, we illustrate the performance of .
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