Search results for "Decomposable Graphical Models."

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Inferring networks from high-dimensional data with mixed variables

2014

We present two methodologies to deal with high-dimensional data with mixed variables, the strongly decomposable graphical model and the regression-type graphical model. The first model is used to infer conditional independence graphs. The latter model is applied to compute the relative importance or contribution of each predictor to the response variables. Recently, penalized likelihood approaches have also been proposed to estimate graph structures. In a simulation study, we compare the performance of the strongly decomposable graphical model and the graphical lasso in terms of graph recovering. Five different graph structures are used to simulate the data: the banded graph, the cluster gr…

Random graphClustering high-dimensional dataPenalized likelihoodTheoretical computer scienceConditional independenceDecomposable Graphical Models.Computer scienceCluster graphMixed variablesGraphical modelMutual informationPenalized Gaussian Graphical ModelSettore SECS-S/01 - Statistica
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