首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >Learning high-dimensional directed acyclic graphs with latent and selection variables
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Learning high-dimensional directed acyclic graphs with latent and selection variables

机译:学习带有潜变量和选择变量的高维有向无环图

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We consider the problem of learning causal information between random variables in directed acyclic graphs (DAGs) when allowing arbitrarily many latent and selection variables. The FCI (Fast Causal Inference) algorithm has been explicitly designed to infer conditional independence and causal information in such settings. However, FCI is computationally infeasible for large graphs. We therefore propose the new RFCI algorithm, which is much faster than FCI. In some situations the output of RFCI is slightly less informative, in particular with respect to conditional independence information. However, we prove that any causal information in the output of RFCI is correct in the asymptotic limit. We also define a class of graphs on which the outputs of FCI and RFCI are identical. We prove consistency of FCI and RFCI in sparse high-dimensional settings, and demonstrate in simulations that the estimation performances of the algorithms are very similar. All software is implemented in the R-package pcalg.
机译:当允许任意多个潜变量和选择变量时,我们考虑在有向无环图(DAG)中学习随机变量之间的因果信息的问题。 FCI(快速因果推断)算法已明确设计为在此类设置中推断条件独立性和因果信息。但是,FCI对于大图在计算上是不可行的。因此,我们提出了新的RFCI算法,该算法比FCI快得多。在某些情况下,RFCI的输出的信息量较少,尤其是在条件独立性信息方面。但是,我们证明了RFCI输出中的任何因果信息在渐近极限内都是正确的。我们还定义了FCI和RFCI的输出相同的一类图。我们证明了在稀疏高维环境下FCI和RFCI的一致性,并在仿真中证明了算法的估计性能非常相似。所有软件都在R-package pcalg中实现。

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