Local and Global Inference for High Dimensional Nonparanormal Graphical Models

نویسندگان

  • Quanquan Gu
  • Yuan Cao
  • Yang Ning
  • Han Liu
چکیده

This paper proposes a unified framework to quantify local and global inferential uncertainty for high dimensional nonparanormal graphical models. In particular, we consider the problems of testing the presence of a single edge and constructing a uniform confidence subgraph. Due to the presence of unknown marginal transformations, we propose a pseudo likelihood based inferential approach. In sharp contrast to the existing high dimensional score test method, our method is free of tuning parameters given an initial estimator, and extends the scope of the existing likelihood based inferential framework. Furthermore, we propose a U-statistic multiplier bootstrap method to construct the confidence subgraph. We show that the constructed subgraph is contained in the true graph with probability greater than a given nominal level. Compared with existing methods for constructing confidence subgraphs, our method does not rely on Gaussian or sub-Gaussian assumptions. The theoretical properties of the proposed inferential methods are verified by thorough numerical experiments and real data analysis. Keyword: Pseudo likelihood, Nonparanormal Graphical Models, Gaussian Copula Graphical Models, Sparsity, Hypothesis Test, Confidence Interval, High-dimensional Inference

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تاریخ انتشار 2015