Sample Complexity Bounds for Score-Matching: Causal Discovery and Generative Modeling
Machine Learning
2023-10-30 v1 Machine Learning
Abstract
This paper provides statistical sample complexity bounds for score-matching and its applications in causal discovery. We demonstrate that accurate estimation of the score function is achievable by training a standard deep ReLU neural network using stochastic gradient descent. We establish bounds on the error rate of recovering causal relationships using the score-matching-based causal discovery method of Rolland et al. [2022], assuming a sufficiently good estimation of the score function. Finally, we analyze the upper bound of score-matching estimation within the score-based generative modeling, which has been applied for causal discovery but is also of independent interest within the domain of generative models.
Cite
@article{arxiv.2310.18123,
title = {Sample Complexity Bounds for Score-Matching: Causal Discovery and Generative Modeling},
author = {Zhenyu Zhu and Francesco Locatello and Volkan Cevher},
journal= {arXiv preprint arXiv:2310.18123},
year = {2023}
}
Comments
Accepted in NeurIPS 2023