利用网络特征选择图模型中的正则化参数

Selection of the Regularization Parameter in Graphical Models Using Network Characteristics

Journal of Computational and Graphical Statistics · 2017
被引 14
ABS 3

中文导读

提出几种基于网络结构特征的方法来选择图模型中的正则化参数,通过模拟和基因表达数据验证,能可靠恢复图结构并发现与结肠癌相关的基因关联。

Abstract

Gaussian graphical models represent the underlying graph structure of conditional dependence between random variables, which can be determined using their partial correlation or precision matrix. In a high-dimensional setting, the precision matrix is estimated using penalized likelihood by adding a penalization term, which controls the amount of sparsity in the precision matrix and totally characterizes the complexity and structure of the graph. The most commonly used penalization term is the L1 norm of the precision matrix scaled by the regularization parameter, which determines the trade-off between sparsity of the graph and fit to the data. In this article, we propose several procedures to select the regularization parameter in the estimation of graphical models that focus on recovering reliably the appropriate network structure of the graph. We conduct an extensive simulation study to show that the proposed methods produce useful results for different network topologies. The approaches are also applied in a high-dimensional case study of gene expression data with the aim to discover the genes relevant to colon cancer. Using these data, we find graph structures, which are verified to display significant biological gene associations. Supplementary material is available online.

图模型高维统计网络拓扑基因表达数据分析