I have a dataset containing repeated measures and quite a lot of variables per observation. Therefore, I need to find a way to select explanatory variables in a smart way. Regularized Regression methods sound good to me to address this problem.
Upon looking for a solution, I found out about the glmmLasso package quite recently. However, I have difficulties defining a model. I found a demo file online, but since I'm a beginner with R, I had a hard time understanding it.
(demo: https://rdrr.io/cran/glmmLasso/src/demo/glmmLasso-soccer.r)
Since I cannot share the original data, I would suggest you use the soccer dataset (the same dataset used in glmmLasso demo file). The variable team is repeated in observations and should be taken as a random effect.
# sample data
library(glmmLasso)
data("soccer")
I would appreciate if you can explain the parameters lambda and family, and how to tune them.