High-Dimensional Inference


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Documentation for package ‘hdi’ version 0.1-9

Help Pages

hdi-package hdi
boot.lasso.proj P-values based on the bootstrapped lasso projection method
clusterGroupBound Hierarchical structure group tests in linear model
fdr.adjust Function to calculate FDR adjusted p-values
glm.pval Function to calculate p-values for a generalized linear model.
groupBound Lower bound on the l1-norm of groups of regression variables
hdi Function to perform inference in high-dimensional (generalized) linear models
lasso.cv Select Predictors via (10-fold) Cross-Validation of the Lasso
lasso.firstq Determine the first q Predictors in the Lasso Path
lasso.proj P-values based on lasso projection method
lm.ci Function to calculate confidence intervals for ordinary multiple linear regression.
lm.pval Function to calculate p-values for ordinary multiple linear regression.
multi.split Calculate P-values Based on Multi-Splitting Approach
plot.clusterGroupBound Plot output of hierarchical testing of groups of variables
riboflavin Riboflavin data set
ridge.proj P-values based on ridge projection method
rX Generate Data Design Matrix X and Coefficient Vector beta
rXb Generate Data Design Matrix X and Coefficient Vector beta
stability Function to perform stability selection