Uses gamlss.lasso::gnet() to fit ENet on the mean submodel of
gamlss(dist = BE). The routine assumes complete cases and does not expose
offsets or precision-model terms.
betareg_enet_gamlss(
X,
Y,
method = c("IC", "CV"),
ICpen = c("BIC", "AIC", "HQC"),
alpha = 1,
trace = FALSE
)Named numeric vector of coefficients as in betareg_lasso_gamlss().
Numeric matrix (n × p) of mean-submodel predictors.
Numeric response in (0,1). Values are squeezed to (0,1) internally.
"IC" (information criterion) or "CV".
Penalty for "IC" selection: "BIC", "AIC", or "HQC".
Elastic-net mixing (1 = LASSO, 0 = ridge).
Logical; print stepwise trace.
gamlss.lasso::gnet(), gamlss::gamlss(), gamlss.dist::BE()