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A Kernel Test for Causal Association via Noise Contrastive Backdoor Adjustment

Robert Hu
Dino Sejdinovic
R. Evans
Abstract

Causal inference grows increasingly complex as the number of confounders increases. Given treatments XX, confounders ZZ and outcomes YY, we develop a non-parametric method to test the \textit{do-null} hypothesis H0:  p(ydo(X=x))=p(y)H_0:\; p(y|\text{\it do}(X=x))=p(y) against the general alternative. Building on the Hilbert Schmidt Independence Criterion (HSIC) for marginal independence testing, we propose backdoor-HSIC (bd-HSIC) and demonstrate that it is calibrated and has power for both binary and continuous treatments under a large number of confounders. Additionally, we establish convergence properties of the estimators of covariance operators used in bd-HSIC. We investigate the advantages and disadvantages of bd-HSIC against parametric tests as well as the importance of using the do-null testing in contrast to marginal independence testing or conditional independence testing. A complete implementation can be found at \hyperlink{https://github.com/MrHuff/kgformula}{\texttt{https://github.com/MrHuff/kgformula}}.

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