The Nonparanormal: Semiparametric Estimation of High Dimensional Undirected Graphs 论文

2018Figshare引用 680
Bayesian Modeling and Causal InferenceStatistical Methods and InferenceBayesian Methods and Mixture Models

摘要

Recent methods for estimating sparse undirected graphs for real-valued data in high dimensional problems rely heavily on the assumption of normality. We show how to use a semiparametric Gaussian copula---or "nonparanormal"---for high dimensional inference. Just as additive models extend linear models by replacing linear functions with a set of one-dimensional smooth functions, the nonparanormal extends the normal by transforming the variables by smooth functions. We derive a method for estimating the nonparanormal, study the method's theoretical properties, and show that it works well in many examples.