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Hauptverfasser: Wang, Yuxuan, Liu, Mingzhou, Sun, Xinwei, Wang, Wei, Wang, Yizhou
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2406.10917
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author Wang, Yuxuan
Liu, Mingzhou
Sun, Xinwei
Wang, Wei
Wang, Yizhou
author_facet Wang, Yuxuan
Liu, Mingzhou
Sun, Xinwei
Wang, Wei
Wang, Yizhou
contents Causal discovery is crucial for understanding complex systems and informing decisions. While observational data can uncover causal relationships under certain assumptions, it often falls short, making active interventions necessary. Current methods, such as Bayesian and graph-theoretical approaches, do not prioritize decision-making and often rely on ideal conditions or information gain, which is not directly related to hypothesis testing. We propose a novel Bayesian optimization-based method inspired by Bayes factors that aims to maximize the probability of obtaining decisive and correct evidence. Our approach uses observational data to estimate causal models under different hypotheses, evaluates potential interventions pre-experimentally, and iteratively updates priors to refine interventions. We demonstrate the effectiveness of our method through various experiments. Our contributions provide a robust framework for efficient causal discovery through active interventions, enhancing the practical application of theoretical advancements.
format Preprint
id arxiv_https___arxiv_org_abs_2406_10917
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Bayesian Intervention Optimization for Causal Discovery
Wang, Yuxuan
Liu, Mingzhou
Sun, Xinwei
Wang, Wei
Wang, Yizhou
Machine Learning
Causal discovery is crucial for understanding complex systems and informing decisions. While observational data can uncover causal relationships under certain assumptions, it often falls short, making active interventions necessary. Current methods, such as Bayesian and graph-theoretical approaches, do not prioritize decision-making and often rely on ideal conditions or information gain, which is not directly related to hypothesis testing. We propose a novel Bayesian optimization-based method inspired by Bayes factors that aims to maximize the probability of obtaining decisive and correct evidence. Our approach uses observational data to estimate causal models under different hypotheses, evaluates potential interventions pre-experimentally, and iteratively updates priors to refine interventions. We demonstrate the effectiveness of our method through various experiments. Our contributions provide a robust framework for efficient causal discovery through active interventions, enhancing the practical application of theoretical advancements.
title Bayesian Intervention Optimization for Causal Discovery
topic Machine Learning
url https://arxiv.org/abs/2406.10917