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Multi-domain Causal Structure Learning in Linear Systems

机译:线性系统中的多域因果结构学习

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摘要

We study the problem of causal structure learning in linear systems from observational data given in multiple domains, across which the causal coefficients and/or the distribution of the exogenous noises may vary. The main tool used in our approach is the principle that in a causally sufficient system, the causal modules, as well as their included parameters, change independently across domains. We first introduce our approach for finding causal direction in a system comprising two variables and propose efficient methods for identifying causal direction. Then we generalize our methods to causal structure learning in networks of variables. Most of previous work in structure learning from multi-domain data assume that certain types of invariance are held in causal modules across domains. Our approach unifies the idea in those works and generalizes to the case that there is no such invariance across the domains. Our proposed methods are generally capable of identifying causal direction from fewer than ten domains. When the invariance property holds, two domains are generally sufficient.
机译:我们从在多个域中给出的观测数据研究线性系统中的因果结构问题,跨因果因果系数和/或外源噪声的分布可能会发生变化。在我们的方法中使用的主要工具是这样的原理:在因果充分的系统中,因果模块及其包含的参数在各个域之间独立地变化。我们首先介绍在包含两个变量的系统中寻找因果方向的方法,并提出识别因果方向的有效方法。然后,我们将我们的方法推广到变量网络中的因果结构学习。从多域数据进行结构学习的大多数先前工作都假设某些不变性保存在跨域的因果模块中。我们的方法统一了那些作品中的思想,并泛化为跨领域不存在这种不变性的情况。我们提出的方法通常能够从少于十个域中识别因果关系。当不变性成立时,通常两个域就足够了。

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