glmnet tests on solaris.bibtex.classif.glmnet and classif.cv_glmnet with predict_type set to "prob" (#155).glmnet to be more robust if the order of features has changed between train and predict.$model slot of the {kknn} learner now returns a list containing some information which is being used during the predict step. Before, the slot was empty because there is no training step for {kknn}.saveRDS(), serialize() etc.penalty.factor is a vector param, not a ParamDbl (#141)mxitnr and epsnr from glmnet v4.0 updatesurv.glmnet (#130)mlr3proba (#144)surv.xgboost (#135)surv.ranger (#134)cv_glmnet and glmnet (#99)predict.gamma and newoffset arg (#98)inst/paramtest was added. This test checks against the arguments of the upstream train & predict functions and ensures that all parameters are implemented in the respective mlr3 learner. (#96)interaction_constraints to {xgboost} learners (#97).classif.multinom from package nnet.regr.lm and classif.log_reg now ignore the global option "contrasts".additional-learners.Rmd listing all mlr3 custom learnerslogical() to multiple learners.regr.glmnet, regr.km, regr.ranger, regr.svm, regr.xgboost, classif.glmnet, classif.lda, classif.naivebayes, classif.qda, classif.ranger and classif.svm.glmnet: Added relax parameter (v3.0)xgboost: Updated parameters for v0.90.0.2*.xgboost and *.svm which was triggered if columns were reordered between $train() and $predict().Changes to work with new mlr3::Learner API.
Improved documentation.
Added references.
add new parameters of xgboost version 0.90.2
add parameter dependencies for xgboost