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Bayesian inference of causal effects from observational data in Gaussian graphical models

机译:高斯图形模型中观测数据的因果效应的贝叶斯推断

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摘要

We assume that multivariate observational data are generated from a distribution whose conditional independencies are encoded in a Directed Acyclic Graph (DAG). For any given DAG, the causal effect of a variable onto another one can be evaluated through intervention calculus. A DAG is typically not identifiable from observational data alone. However, its Markov equivalence class (a collection of DAGs) can be estimated from the data. As a consequence, for the same intervention a set of causal effects, one for each DAG in the equivalence class, can be evaluated. In this paper, we propose a fully Bayesian methodology to make inference on the causal effects of any intervention in the system. Main features of our method are: (a) both uncertainty on the equivalence class and the causal effects are jointly modeled; (b) priors on the parameters of the modified Cholesky decomposition of the precision matrices across all DAG models are constructively assigned starting from a unique prior on the complete (unrestricted) DAG; (c) an efficient algorithm to sample from the posterior distribution on graph space is adopted; (d) an objective Bayes approach, requiring virtually no user specification, is used throughout. We demonstrate the merits of our methodology in simulation studies, wherein comparisons with current state-of-the-art procedures turn out to be highly satisfactory. Finally we examine a real data set of gene expressions for Arabidopsis thaliana.
机译:我们假设多变量观测数据由其条件独立性在定向的非循环图(DAG)中编码的分布生成。对于任何给定的DAG,可以通过干预微积分来评估变量在另一个的情况下的因果效应。 DAG通常不可识别单独的观察数据。但是,它可以从数据估算其马尔可夫等价类(DAG的集合)。因此,对于相同的干预一组因果效应,可以评估等同类中的每个DAG的因果效果。在本文中,我们提出了一种完全贝叶斯方法,对系统中任何干预的因果效应引起推断。我们方法的主要特征是:(a)同等类别的不确定性和因果效应都是共同建模的; (b)关于所有DAG模型的修改孔代码的参数上的Precientifired矩阵分解的参数是从完整(不受限制的)DAG的独特之处开始的建设性地分配; (c)采用从图形空间的后部分布采样的有效算法; (d)在整个需要几乎没有用户规范的目标贝叶斯方法。我们展示了我们在仿真研究中的方法的优点,其中与当前最先进的程序的比较结果是非常令人满意的。最后,我们研究了拟南芥基因表达的真实数据集。

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