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Lrnr_rpart.Rd
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Lrnr_rpart.Rd
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% Generated by roxygen2: do not edit by hand
% Please edit documentation in R/Lrnr_rpart.R
\docType{class}
\name{Lrnr_rpart}
\alias{Lrnr_rpart}
\title{Learner for Recursive Partitioning and Regression Trees.}
\format{
\code{\link{R6Class}} object.
}
\value{
Learner object with methods for training and prediction. See
\code{\link{Lrnr_base}} for documentation on learners.
}
\description{
This learner uses \code{\link[rpart]{rpart}} from \code{rpart} to fit
recursive partitioning and regression trees.
}
\section{Parameters}{
\describe{
\item{\code{model}}{If logical: keep a copy of the model frame in the
result?
}
\item{\code{x}}{Whether to keep a copy of the x matrix in the result.
}
\item{\code{y}}{Whether to keep a copy of the dependent variable in the
result.
}
\item{\code{...}}{ Other parameters to be passed directly to
\code{\link[rpart]{rpart}}. See its documentation for details.
}
}
}
\seealso{
Other Learners:
\code{\link{Custom_chain}},
\code{\link{Lrnr_HarmonicReg}},
\code{\link{Lrnr_arima}},
\code{\link{Lrnr_bartMachine}},
\code{\link{Lrnr_base}},
\code{\link{Lrnr_bayesglm}},
\code{\link{Lrnr_bilstm}},
\code{\link{Lrnr_bound}},
\code{\link{Lrnr_caret}},
\code{\link{Lrnr_cv_selector}},
\code{\link{Lrnr_cv}},
\code{\link{Lrnr_dbarts}},
\code{\link{Lrnr_define_interactions}},
\code{\link{Lrnr_density_discretize}},
\code{\link{Lrnr_density_hse}},
\code{\link{Lrnr_density_semiparametric}},
\code{\link{Lrnr_earth}},
\code{\link{Lrnr_expSmooth}},
\code{\link{Lrnr_gam}},
\code{\link{Lrnr_gbm}},
\code{\link{Lrnr_glm_fast}},
\code{\link{Lrnr_glmnet}},
\code{\link{Lrnr_glm}},
\code{\link{Lrnr_grf}},
\code{\link{Lrnr_gru_keras}},
\code{\link{Lrnr_gts}},
\code{\link{Lrnr_h2o_grid}},
\code{\link{Lrnr_hal9001}},
\code{\link{Lrnr_haldensify}},
\code{\link{Lrnr_hts}},
\code{\link{Lrnr_independent_binomial}},
\code{\link{Lrnr_lightgbm}},
\code{\link{Lrnr_lstm_keras}},
\code{\link{Lrnr_lstm}},
\code{\link{Lrnr_mean}},
\code{\link{Lrnr_multiple_ts}},
\code{\link{Lrnr_multivariate}},
\code{\link{Lrnr_nnet}},
\code{\link{Lrnr_nnls}},
\code{\link{Lrnr_optim}},
\code{\link{Lrnr_pca}},
\code{\link{Lrnr_pkg_SuperLearner}},
\code{\link{Lrnr_polspline}},
\code{\link{Lrnr_pooled_hazards}},
\code{\link{Lrnr_randomForest}},
\code{\link{Lrnr_ranger}},
\code{\link{Lrnr_revere_task}},
\code{\link{Lrnr_rugarch}},
\code{\link{Lrnr_screener_augment}},
\code{\link{Lrnr_screener_coefs}},
\code{\link{Lrnr_screener_correlation}},
\code{\link{Lrnr_screener_importance}},
\code{\link{Lrnr_sl}},
\code{\link{Lrnr_solnp_density}},
\code{\link{Lrnr_solnp}},
\code{\link{Lrnr_stratified}},
\code{\link{Lrnr_subset_covariates}},
\code{\link{Lrnr_svm}},
\code{\link{Lrnr_tsDyn}},
\code{\link{Lrnr_ts_weights}},
\code{\link{Lrnr_xgboost}},
\code{\link{Pipeline}},
\code{\link{Stack}},
\code{\link{define_h2o_X}()},
\code{\link{undocumented_learner}}
}
\concept{Learners}
\keyword{data}