Graphical Models in Ultrahigh-Dimensional and Error-Prone Data
via Boosting Algorithm
Description
We consider the ultrahigh-dimensional and error-prone data. Our goal aims to estimate the precision matrix and identify the graphical structure of the random variables with measurement error corrected. We further adopt the estimated precision matrix to the linear discriminant function to do classification for multi-label classes.