Builds a eXtreme Gradient Boosting model using the native XGBoost backend.
h2o.xgboost(
x,
y,
training_frame,
model_id = NULL,
validation_frame = NULL,
nfolds = 0,
keep_cross_validation_models = TRUE,
keep_cross_validation_predictions = FALSE,
keep_cross_validation_fold_assignment = FALSE,
score_each_iteration = FALSE,
fold_assignment = c("AUTO", "Random", "Modulo", "Stratified"),
fold_column = NULL,
ignore_const_cols = TRUE,
offset_column = NULL,
weights_column = NULL,
stopping_rounds = 0,
stopping_metric = c("AUTO", "deviance", "logloss", "MSE", "RMSE", "MAE", "RMSLE",
"AUC", "AUCPR", "lift_top_group", "misclassification", "mean_per_class_error",
"custom", "custom_increasing"),
stopping_tolerance = 0.001,
max_runtime_secs = 0,
seed = -1,
distribution = c("AUTO", "bernoulli", "multinomial", "gaussian", "poisson", "gamma",
"tweedie", "laplace", "quantile", "huber"),
tweedie_power = 1.5,
categorical_encoding = c("AUTO", "Enum", "OneHotInternal", "OneHotExplicit", "Binary",
"Eigen", "LabelEncoder", "SortByResponse", "EnumLimited"),
quiet_mode = TRUE,
checkpoint = NULL,
export_checkpoints_dir = NULL,
ntrees = 50,
max_depth = 6,
min_rows = 1,
min_child_weight = 1,
learn_rate = 0.3,
eta = 0.3,
sample_rate = 1,
subsample = 1,
col_sample_rate = 1,
colsample_bylevel = 1,
col_sample_rate_per_tree = 1,
colsample_bytree = 1,
max_abs_leafnode_pred = 0,
max_delta_step = 0,
monotone_constraints = NULL,
score_tree_interval = 0,
min_split_improvement = 0,
gamma = 0,
nthread = -1,
save_matrix_directory = NULL,
build_tree_one_node = FALSE,
calibrate_model = FALSE,
calibration_frame = NULL,
max_bins = 256,
max_leaves = 0,
min_sum_hessian_in_leaf = 100,
min_data_in_leaf = 0,
sample_type = c("uniform", "weighted"),
normalize_type = c("tree", "forest"),
rate_drop = 0,
one_drop = FALSE,
skip_drop = 0,
tree_method = c("auto", "exact", "approx", "hist"),
grow_policy = c("depthwise", "lossguide"),
booster = c("gbtree", "gblinear", "dart"),
reg_lambda = 1,
reg_alpha = 0,
dmatrix_type = c("auto", "dense", "sparse"),
backend = c("auto", "gpu", "cpu"),
gpu_id = 0,
verbose = FALSE
)
(Optional) A vector containing the names or indices of the predictor variables to use in building the model. If x is missing, then all columns except y are used.
The name or column index of the response variable in the data. The response must be either a numeric or a categorical/factor variable. If the response is numeric, then a regression model will be trained, otherwise it will train a classification model.
Id of the training data frame.
Destination id for this model; auto-generated if not specified.
Id of the validation data frame.
Number of folds for K-fold cross-validation (0 to disable or >= 2). Defaults to 0.
Logical
. Whether to keep the cross-validation models. Defaults to TRUE.
Logical
. Whether to keep the predictions of the cross-validation models. Defaults to FALSE.
Logical
. Whether to keep the cross-validation fold assignment. Defaults to FALSE.
Logical
. Whether to score during each iteration of model training. Defaults to FALSE.
Cross-validation fold assignment scheme, if fold_column is not specified. The 'Stratified' option will stratify the folds based on the response variable, for classification problems. Must be one of: "AUTO", "Random", "Modulo", "Stratified". Defaults to AUTO.
Column with cross-validation fold index assignment per observation.
Logical
. Ignore constant columns. Defaults to TRUE.
Offset column. This will be added to the combination of columns before applying the link function.
Column with observation weights. Giving some observation a weight of zero is equivalent to excluding it from the dataset; giving an observation a relative weight of 2 is equivalent to repeating that row twice. Negative weights are not allowed. Note: Weights are per-row observation weights and do not increase the size of the data frame. This is typically the number of times a row is repeated, but non-integer values are supported as well. During training, rows with higher weights matter more, due to the larger loss function pre-factor.
Early stopping based on convergence of stopping_metric. Stop if simple moving average of length k of the stopping_metric does not improve for k:=stopping_rounds scoring events (0 to disable) Defaults to 0.
Metric to use for early stopping (AUTO: logloss for classification, deviance for regression and anonomaly_score for Isolation Forest). Note that custom and custom_increasing can only be used in GBM and DRF with the Python client. Must be one of: "AUTO", "deviance", "logloss", "MSE", "RMSE", "MAE", "RMSLE", "AUC", "AUCPR", "lift_top_group", "misclassification", "mean_per_class_error", "custom", "custom_increasing". Defaults to AUTO.
Relative tolerance for metric-based stopping criterion (stop if relative improvement is not at least this much) Defaults to 0.001.
Maximum allowed runtime in seconds for model training. Use 0 to disable. Defaults to 0.
Seed for random numbers (affects certain parts of the algo that are stochastic and those might or might not be enabled by default). Defaults to -1 (time-based random number).
Distribution function Must be one of: "AUTO", "bernoulli", "multinomial", "gaussian", "poisson", "gamma", "tweedie", "laplace", "quantile", "huber". Defaults to AUTO.
Tweedie power for Tweedie regression, must be between 1 and 2. Defaults to 1.5.
Encoding scheme for categorical features Must be one of: "AUTO", "Enum", "OneHotInternal", "OneHotExplicit", "Binary", "Eigen", "LabelEncoder", "SortByResponse", "EnumLimited". Defaults to AUTO.
Logical
. Enable quiet mode Defaults to TRUE.
Model checkpoint to resume training with.
Automatically export generated models to this directory.
(same as n_estimators) Number of trees. Defaults to 50.
Maximum tree depth. Defaults to 6.
(same as min_child_weight) Fewest allowed (weighted) observations in a leaf. Defaults to 1.
(same as min_rows) Fewest allowed (weighted) observations in a leaf. Defaults to 1.
(same as eta) Learning rate (from 0.0 to 1.0) Defaults to 0.3.
(same as learn_rate) Learning rate (from 0.0 to 1.0) Defaults to 0.3.
(same as subsample) Row sample rate per tree (from 0.0 to 1.0) Defaults to 1.
(same as sample_rate) Row sample rate per tree (from 0.0 to 1.0) Defaults to 1.
(same as colsample_bylevel) Column sample rate (from 0.0 to 1.0) Defaults to 1.
(same as col_sample_rate) Column sample rate (from 0.0 to 1.0) Defaults to 1.
(same as colsample_bytree) Column sample rate per tree (from 0.0 to 1.0) Defaults to 1.
(same as col_sample_rate_per_tree) Column sample rate per tree (from 0.0 to 1.0) Defaults to 1.
(same as max_delta_step) Maximum absolute value of a leaf node prediction Defaults to 0.0.
(same as max_abs_leafnode_pred) Maximum absolute value of a leaf node prediction Defaults to 0.0.
A mapping representing monotonic constraints. Use +1 to enforce an increasing constraint and -1 to specify a decreasing constraint.
Score the model after every so many trees. Disabled if set to 0. Defaults to 0.
(same as gamma) Minimum relative improvement in squared error reduction for a split to happen Defaults to 0.0.
(same as min_split_improvement) Minimum relative improvement in squared error reduction for a split to happen Defaults to 0.0.
Number of parallel threads that can be used to run XGBoost. Cannot exceed H2O cluster limits (-nthreads parameter). Defaults to maximum available Defaults to -1.
Directory where to save matrices passed to XGBoost library. Useful for debugging.
Logical
. Run on one node only; no network overhead but fewer cpus used. Suitable for small datasets.
Defaults to FALSE.
Logical
. Use Platt Scaling to calculate calibrated class probabilities. Calibration can provide more
accurate estimates of class probabilities. Defaults to FALSE.
Calibration frame for Platt Scaling
For tree_method=hist only: maximum number of bins Defaults to 256.
For tree_method=hist only: maximum number of leaves Defaults to 0.
For tree_method=hist only: the mininum sum of hessian in a leaf to keep splitting Defaults to 100.0.
For tree_method=hist only: the mininum data in a leaf to keep splitting Defaults to 0.0.
For booster=dart only: sample_type Must be one of: "uniform", "weighted". Defaults to uniform.
For booster=dart only: normalize_type Must be one of: "tree", "forest". Defaults to tree.
For booster=dart only: rate_drop (0..1) Defaults to 0.0.
Logical
. For booster=dart only: one_drop Defaults to FALSE.
For booster=dart only: skip_drop (0..1) Defaults to 0.0.
Tree method Must be one of: "auto", "exact", "approx", "hist". Defaults to auto.
Grow policy - depthwise is standard GBM, lossguide is LightGBM Must be one of: "depthwise", "lossguide". Defaults to depthwise.
Booster type Must be one of: "gbtree", "gblinear", "dart". Defaults to gbtree.
L2 regularization Defaults to 1.0.
L1 regularization Defaults to 0.0.
Type of DMatrix. For sparse, NAs and 0 are treated equally. Must be one of: "auto", "dense", "sparse". Defaults to auto.
Backend. By default (auto), a GPU is used if available. Must be one of: "auto", "gpu", "cpu". Defaults to auto.
Which GPU to use. Defaults to 0.
Logical
. Print scoring history to the console (Metrics per tree). Defaults to FALSE.