library(lessSEM)
# Identical to regsem, lessSEM builds on the lavaan
# package for model specification. The first step
# therefore is to implement the model in lavaan.
dataset <- simulateExampleData()
lavaanSyntax <- "
f =~ l1*y1 + l2*y2 + l3*y3 + l4*y4 + l5*y5 +
l6*y6 + l7*y7 + l8*y8 + l9*y9 + l10*y10 +
l11*y11 + l12*y12 + l13*y13 + l14*y14 + l15*y15
f ~~ 1*f
"
lavaanModel <- lavaan::sem(lavaanSyntax,
data = dataset,
meanstructure = TRUE,
std.lv = TRUE)
# Regularization:
# names of the regularized parameters:
regularized = paste0("l", 6:15)
# define adaptive lasso weights:
# We use the inverse of the absolute unregularized parameters
# (this is the default in adaptiveLasso and can also specified
# by setting weights = NULL)
weights <- 1/abs(getLavaanParameters(lavaanModel))
weights[!names(weights) %in% regularized] <- 0
lsem <- smoothAdaptiveLasso(
# pass the fitted lavaan model
lavaanModel = lavaanModel,
regularized = regularized,
weights = weights,
epsilon = 1e-10,
tau = 1e-4,
lambdas = seq(0,1,length.out = 50))
# use the plot-function to plot the regularized parameters:
plot(lsem)
# the coefficients can be accessed with:
coef(lsem)
# elements of lsem can be accessed with the @ operator:
lsem@parameters[1,]
# AIC and BIC:
AIC(lsem)
BIC(lsem)
# The best parameters can also be extracted with:
coef(lsem, criterion = "AIC")
coef(lsem, criterion = "BIC")
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