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Efficient Sampling and Structure Learning of Bayesian Networks
TL;DR: A novel hybrid method which reduces the complexity of MCMC approaches to that of a constraint-based method and offers markedly superior performance to alternatives, particularly because DAGs can also be sampled from the posterior distribution, enabling full Bayesian model averaging for much larger Bayesian networks.
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Abstract: Bayesian networks are probabilistic graphical models widely employed to understand dependencies in high dimensional data, and even to facilitate causal discovery. Learning the underlying network structure, which is encoded as a directed acyclic graph (DAG) is highly challenging mainly due to the vast number of possible networks. Efforts have focussed on two fronts: constraint-based methods that perform conditional independence tests to exclude edges and score and search approaches which explore the DAG space with greedy or MCMC schemes. Here we synthesise these two fields in a novel hybrid method which reduces the complexity of MCMC approaches to that of a constraint-based method. Individual steps in the MCMC scheme only require simple table lookups so that very long chains can be efficiently obtained. Furthermore, the scheme includes an iterative procedure to correct for errors from the conditional independence tests. The algorithm offers markedly superior performance to alternatives, particularly because DAGs can also be sampled from the posterior distribution, enabling full Bayesian model averaging for much larger Bayesian networks.
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A tutorial on bayesian networks for psychopathology researchers.
TL;DR: This tutorial aims to introduce Bayesian Networks to identify admissible causal relationships in cross-sectional data, as well as how to estimate these models in R through three algorithm families with an empirical example data set of depressive symptoms.
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A survey of Bayesian Network structure learning.
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Dissociation in relation to other mental health conditions: An exploration using network analysis.
TL;DR: Dissociative experiences taking the form of a Felt Sense of Anomaly relate to both common mental health conditions and psychotic experiences, and dissociation was found to be highly connected in both network models.
51
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TL;DR: In this paper , the authors compared six different correlation methods in their ability to capture complex dependence between genes in three different tissues and compared their gene-pairwise coefficient results and corresponding WGCNA results.
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Bayesian network analysis reveals the interplay of intracranial aneurysm rupture risk factors
Matteo Delucchi,Georg Spinner,Marco Scutari,Philippe Bijlenga,Sandrine Morel,Christoph M. Friedrich,Reinhard Furrer,Sven Hirsch +7 more
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