Publication
NeurIPS 2022
Conference paper
Independence Testing for Bounded Degree Bayesian Networks
Abstract
We study the following independence testing problem: given access to samples from a distribution P over $ {0,1}^n $, decide whether P is a product distribution or whether it is ε-far in total variation distance from any product distribution. For arbitrary distributions, this problem requires exp(n) samples. We show in this work that if P has a sparse structure, then in fact only linearly many samples are required.Specifically, if P is Markov with respect to a Bayesian network whose underlying DAG has in-degree bounded by d, then ~Θ( $ 2^{d/2} $ ⋅n/ $ ε^2 $) samples are necessary and sufficient for independence testing.