Ben Huh, Avinash Baidya
NeurIPS 2022
We study the following independence testing problem: given access to samples from a distribution P over , 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( ⋅n/ ) samples are necessary and sufficient for independence testing.
Ben Huh, Avinash Baidya
NeurIPS 2022
Hongyu Tu, Shantam Shorewala, et al.
NeurIPS 2022
Shiqiang Wang, Nathalie Baracaldo Angel, et al.
NeurIPS 2022
Chanakya Ekbote, Moksh Jain, et al.
NeurIPS 2022