Model-Powered Conditional Independence Test
Rajat Sen, Ananda Theertha Suresh, Karthikeyan Shanmugam, Alexandros, G. Dimakis, Sanjay Shakkottai

TL;DR
This paper introduces a novel classification-based approach for non-parametric conditional independence testing using advanced classifiers, with a new bootstrap method for sample generation and theoretical guarantees, outperforming previous methods.
Contribution
It proposes a new CI testing method converting the problem into classification, utilizing a bootstrap procedure for sample generation, and provides theoretical analysis and empirical validation.
Findings
Significant performance improvements over prior methods.
Effective handling of high-dimensional data.
Theoretical guarantees for sample closeness and error bounds.
Abstract
We consider the problem of non-parametric Conditional Independence testing (CI testing) for continuous random variables. Given i.i.d samples from the joint distribution of continuous random vectors and we determine whether . We approach this by converting the conditional independence test into a classification problem. This allows us to harness very powerful classifiers like gradient-boosted trees and deep neural networks. These models can handle complex probability distributions and allow us to perform significantly better compared to the prior state of the art, for high-dimensional CI testing. The main technical challenge in the classification problem is the need for samples from the conditional product distribution -- the joint distribution if and only if -- when given access only to i.i.d.…
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Taxonomy
TopicsStatistical Methods and Inference · Bayesian Modeling and Causal Inference · Machine Learning and Algorithms
