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Group invariance principles for causal generative models

机译:因果生成模型的组不变性原则

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摘要

The postulate of independence of cause and mechanism (ICM) has recently led to several new causal discovery algorithms. The interpretation of independence and the way it is utilized, however, varies across these methods. Our aim in this paper is to propose a group theoretic framework for ICM to unify and generalize these approaches. In our setting, the cause-mechanism relationship is assessed by perturbing it with random group transformations. We show that the group theoretic view encompasses previous ICM approaches and provides a very general tool to study the structure of data generating mechanisms with direct applications to machine learning.
机译:因果机制独立性(ICM)的假设最近导致了几种新的因果发现算法。但是,在这些方法中,对独立性及其利用方式的解释会有所不同。本文的目的是为ICM提出一个团体理论框架,以统一和概括这些方法。在我们的环境中,通过随机分组转换干扰原因-机理关系来评估它。我们证明了群体理论观点涵盖了以前的ICM方法,并提供了一个非常通用的工具来研究将数据直接应用于机器学习的数据生成机制的结构。

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