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Main Author: Saremi, Mehrzad
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2309.14073
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author Saremi, Mehrzad
author_facet Saremi, Mehrzad
contents Finding the parameters of a latent variable causal model is central to causal inference and causal identification. In this article, we show that existing graphical structures that are used in causal inference are not stable under marginalization of Gaussian Bayesian networks, and present a graphical structure that faithfully represent margins of Gaussian Bayesian networks. We present the first duality between parameter optimization of a latent variable model and training a feed-forward neural network in the parameter space of the assumed family of distributions. Based on this observation, we develop an algorithm for parameter optimization of these graphical structures based on a given observational distribution. Then, we provide conditions for causal effect identifiability in the Gaussian setting. We propose an meta-algorithm that checks whether a causal effect is identifiable or not. Moreover, we lay a grounding for generalizing the duality between a neural network and a causal model from the Gaussian to other distributions.
format Preprint
id arxiv_https___arxiv_org_abs_2309_14073
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Neural Network Parameter-optimization of Gaussian pmDAGs
Saremi, Mehrzad
Machine Learning
Artificial Intelligence
Probability
Finding the parameters of a latent variable causal model is central to causal inference and causal identification. In this article, we show that existing graphical structures that are used in causal inference are not stable under marginalization of Gaussian Bayesian networks, and present a graphical structure that faithfully represent margins of Gaussian Bayesian networks. We present the first duality between parameter optimization of a latent variable model and training a feed-forward neural network in the parameter space of the assumed family of distributions. Based on this observation, we develop an algorithm for parameter optimization of these graphical structures based on a given observational distribution. Then, we provide conditions for causal effect identifiability in the Gaussian setting. We propose an meta-algorithm that checks whether a causal effect is identifiable or not. Moreover, we lay a grounding for generalizing the duality between a neural network and a causal model from the Gaussian to other distributions.
title Neural Network Parameter-optimization of Gaussian pmDAGs
topic Machine Learning
Artificial Intelligence
Probability
url https://arxiv.org/abs/2309.14073