English

Testing Conditional Independence on Discrete Data using Stochastic Complexity

Machine Learning 2019-03-13 v1 Machine Learning

Abstract

Testing for conditional independence is a core aspect of constraint-based causal discovery. Although commonly used tests are perfect in theory, they often fail to reject independence in practice, especially when conditioning on multiple variables. We focus on discrete data and propose a new test based on the notion of algorithmic independence that we instantiate using stochastic complexity. Amongst others, we show that our proposed test, SCI, is an asymptotically unbiased as well as L2L_2 consistent estimator for conditional mutual information (CMI). Further, we show that SCI can be reformulated to find a sensible threshold for CMI that works well on limited samples. Empirical evaluation shows that SCI has a lower type II error than commonly used tests. As a result, we obtain a higher recall when we use SCI in causal discovery algorithms, without compromising the precision.

Keywords

Cite

@article{arxiv.1903.04829,
  title  = {Testing Conditional Independence on Discrete Data using Stochastic Complexity},
  author = {Alexander Marx and Jilles Vreeken},
  journal= {arXiv preprint arXiv:1903.04829},
  year   = {2019}
}

Comments

18 pages, accepted at AISTATS'19, the proposed test was released in the R package SCCI