4.4 Article

Back to the basics: Rethinking partial correlation network methodology

出版社

WILEY
DOI: 10.1111/bmsp.12173

关键词

Gaussian graphical model; maximum likelihood; Fisher Z-transformation; partial correlation; confidence interval; l(1)-regularization

资金

  1. NATIONAL INSTITUTE ON AGING [R01AG050720] Funding Source: NIH RePORTER
  2. National Science Foundation Graduate Research Fellowship Funding Source: Medline
  3. NIA NIH HHS [R01 AG050720] Funding Source: Medline
  4. National Academies of Sciences, Engineering, and Medicine FORD foundation pre-doctoral fellowship Funding Source: Medline

向作者/读者索取更多资源

The Gaussian graphical model (GGM) is an increasingly popular technique used in psychology to characterize relationships among observed variables. These relationships are represented as elements in the precision matrix. Standardizing the precision matrix and reversing the sign yields corresponding partial correlations that imply pairwise dependencies in which the effects of all other variables have been controlled for. The graphical lasso (glasso) has emerged as the default estimation method, which uses l(1)-based regularization. The glasso was developed and optimized for high-dimensional settings where the number of variables (p) exceeds the number of observations (n), which is uncommon in psychological applications. Here we propose to go 'back to the basics', wherein the precision matrix is first estimated with non-regularized maximum likelihood and then Fisher Z transformed confidence intervals are used to determine non-zero relationships. We first show the exact correspondence between the confidence level and specificity, which is due to 1 minus specificity denoting the false positive rate (i.e., alpha). With simulations in low-dimensional settings (p MUCH LESS-THAN n), we then demonstrate superior performance compared to the glasso for detecting the non-zero effects. Further, our results indicate that the glasso is inconsistent for the purpose of model selection and does not control the false discovery rate, whereas the proposed method converges on the true model and directly controls error rates. We end by discussing implications for estimating GGMs in psychology.

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