DIET: Conditional independence testing with marginal dependence measures of residual information Conference Paper


Authors: Sudarshan, M.; Puli, A.; Tansey, W.; Ranganath, R.
Title: DIET: Conditional independence testing with marginal dependence measures of residual information
Conference Title: 26th International Conference on Artificial Intelligence and Statistics (AISTATS)
Abstract: Conditional randomization tests (CRTs) assess whether a variable x is predictive of another variable y, having observed covariates z. CRTs require fitting a large number of predictive models, which is often computationally intractable. Existing solutions to reduce the cost of CRTs typically split the dataset into a train and test portion, or rely on heuristics for interactions, both of which lead to a loss in power. We propose the decoupled independence test (DIET), an algorithm that avoids both of these issues by leveraging marginal independence statistics to test conditional independence relationships. DIET tests the marginal independence of two random variables: Fx|z(x | z) and Fy|z(y | z) where F·|z(· | z) is a conditional cumulative distribution function (CDF) for the distribution p(· | z). These variables are termed “information residuals.” We give sufficient conditions for DIET to achieve finite sample type-1 error control and power greater than the type-1 error rate. We then prove that when using the mutual information between the information residuals as a test statistic, DIET yields the most powerful conditionally valid test. Finally, we show DIET achieves higher power than other tractable CRTs on several synthetic and real benchmarks. Copyright © 2023 by the author(s)
Keywords: sampling; predictive models; statistical tests; power; distribution functions; condition; covariates; a-train; conditional independences; cumulative distribution function; dependence measures; independence tests; randomization tests
Journal Title Proceedings of Machine Learning Research
Volume: 206
Conference Dates: 2023 Apr 25-27
Conference Location: Valencia, Spain
ISBN: 2640-3498
Publisher: Journal Machine Learning Research  
Date Published: 2023-01-01
Start Page: 10343
End Page: 10367
Language: English
PROVIDER: scopus
PMCID: PMC10484293
PUBMED: 37681192
DOI/URL:
Notes: Conference paper -- Source: Scopus
Citation Impact
MSK Authors
  1. Wesley Tansey
    15 Tansey