Statistical network models based on Pairwise Markov Random Fields (PMRFs) are popular tools for analyzing multivariate psychological data, in large part due to their perceived role in generating insights into causal relationships: a practice known as causal discovery in the causal modeling literature. However, since network models are not presented as causal discovery tools, the role they play in generating causal insights is poorly understood among empirical researchers. In this paper, we provide a treatment of how PMRFs such as the Gaussian Graphical Model (GGM) work as causal discovery tools, using Directed Acyclic Graphs (DAGs) and Structural Equation Models (SEMs) as causal models. We describe the key assumptions needed for causal disc...
We study the problem of inferring causal graphs from observational data. We are particularly interes...
We introduce Causal Bayesian Networks as a formalism for representing and explaining probabilistic c...
Graphical models are useful tools in causal inference, and causal directed acyclic graphs (DAGs) are...
Statistical network models based on Pairwise Markov Random Fields (PMRFs) are popular tools for anal...
Subject-matter experts typically think of their datasets as causes and effects between many variable...
Structural equation models can be seen as an extension of Gaussian belief networks to cyclic graphs,...
INST: L_135I introduce the models applied by psychometrics and try to diagnose some of the shortcomi...
The identification of causal relationships between random variables from large-scale observational d...
Graphs/networks have become a powerful analytical approach for data modeling. Besides, with the adva...
We propose different approaches to infer causal influences between agents in a network using only ob...
This paper considers inference of causal structure in a class of graphical models called “conditiona...
A graphical model is a graph that represents a set of conditional independence relations among the v...
Bayesian Networks are probabilistic graphical models that represent conditional independence relatio...
State-of-the-art approaches to causal discovery usually assume a fixed underlying causal model. Howe...
Gaussian graphical models (GGM, aka partial correlation networks) have become increasingly popular i...
We study the problem of inferring causal graphs from observational data. We are particularly interes...
We introduce Causal Bayesian Networks as a formalism for representing and explaining probabilistic c...
Graphical models are useful tools in causal inference, and causal directed acyclic graphs (DAGs) are...
Statistical network models based on Pairwise Markov Random Fields (PMRFs) are popular tools for anal...
Subject-matter experts typically think of their datasets as causes and effects between many variable...
Structural equation models can be seen as an extension of Gaussian belief networks to cyclic graphs,...
INST: L_135I introduce the models applied by psychometrics and try to diagnose some of the shortcomi...
The identification of causal relationships between random variables from large-scale observational d...
Graphs/networks have become a powerful analytical approach for data modeling. Besides, with the adva...
We propose different approaches to infer causal influences between agents in a network using only ob...
This paper considers inference of causal structure in a class of graphical models called “conditiona...
A graphical model is a graph that represents a set of conditional independence relations among the v...
Bayesian Networks are probabilistic graphical models that represent conditional independence relatio...
State-of-the-art approaches to causal discovery usually assume a fixed underlying causal model. Howe...
Gaussian graphical models (GGM, aka partial correlation networks) have become increasingly popular i...
We study the problem of inferring causal graphs from observational data. We are particularly interes...
We introduce Causal Bayesian Networks as a formalism for representing and explaining probabilistic c...
Graphical models are useful tools in causal inference, and causal directed acyclic graphs (DAGs) are...