Penalized Linear Mixed Models for Correlated Data


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Documentation for package ‘plmmr’ version 4.2.0

Help Pages

admix Admix: Semi-simulated SNP data
coef.cv_plmm Coef method for "cv_plmm" class
coef.plmm Coef method for "plmm" class
create_design a function to create a design for PLMM modeling
cv_plmm Cross-validation for plmm
find_example_data A function to help with accessing example PLINK files
lasso helper function to implement lasso penalty
plmm Fit a linear mixed model via penalized maximum likelihood.
plmm_loss Loss method for "plmm" class
plot.cv_plmm Plot method for cv_plmm class
plot.plmm Plot method for plmm class
predict.plmm Predict method for plmm class
print.summary.cv_plmm Print method for summary.cv_plmm objects
print.summary.plmm A function to print the summary of a 'plmm' model
process_delim A function to read in large data files as an FBM
process_plink Preprocess PLINK files using the 'bigsnpr' package
relatedness_mat Calculate a relatedness matrix
summary.cv_plmm A summary function for cv_plmm objects
summary.plmm A summary method for the plmm objects
unzip_example_data For Linux/Unix and MacOS only, here is a companion function to unzip the .gz files that ship with the 'plmmr' package