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Summary We consider graphical models based on a recursive system of linear structural equations. This implies that there is an ordering, $$\sigma$$, of the variables such that each observed variable $$Y_v$$ is a linear function of a variable-specific error term and the other observed variables $$Y_u$$ with $$\sigma(u) < \sigma (v)$$. The causal relationships, i.e., which other variables the linear functions depend on, can be described using a directed graph. It has previously been shown that when the variable-specific error terms are non-Gaussian, the exact causal graph, as opposed to a Markov equivalence class, can be consistently estimated from observational data. We propose an algorithm that yields consistent estimates of the graph also in high-dimensional settings in which the number of variables may grow at a faster rate than the number of observations, but in which the underlying causal structure features suitable sparsity; specifically, the maximum in-degree of the graph is controlled. Our theoretical analysis is couched in the setting of log-concave error distributions.more » « less
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Chen, Wenyu; Drton, Mathias; Wang, Y Samuel (, Biometrika)Summary Prior work has shown that causal structure can be uniquely identified from observational data when these follow a structural equation model whose error terms have equal variance. We show that this fact is implied by an ordering among conditional variances. We demonstrate that ordering estimates of these variances yields a simple yet state-of-the-art method for causal structure learning that is readily extendable to high-dimensional problems.more » « less
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