Spark ML – Decision Trees
Source:R/ml_classification_decision_tree_classifier.R, R/ml_model_decision_tree.R, R/ml_regression_decision_tree_regressor.R
ml_decision_tree.RdPerform classification and regression using decision trees.
Usage
ml_decision_tree_classifier(
x,
formula = NULL,
max_depth = 5,
max_bins = 32,
min_instances_per_node = 1,
min_info_gain = 0,
impurity = "gini",
seed = NULL,
thresholds = NULL,
cache_node_ids = FALSE,
checkpoint_interval = 10,
max_memory_in_mb = 256,
features_col = "features",
label_col = "label",
prediction_col = "prediction",
probability_col = "probability",
raw_prediction_col = "rawPrediction",
uid = random_string("decision_tree_classifier_"),
...
)
ml_decision_tree(
x,
formula = NULL,
type = c("auto", "regression", "classification"),
features_col = "features",
label_col = "label",
prediction_col = "prediction",
variance_col = NULL,
probability_col = "probability",
raw_prediction_col = "rawPrediction",
checkpoint_interval = 10L,
impurity = "auto",
max_bins = 32L,
max_depth = 5L,
min_info_gain = 0,
min_instances_per_node = 1L,
seed = NULL,
thresholds = NULL,
cache_node_ids = FALSE,
max_memory_in_mb = 256L,
uid = random_string("decision_tree_"),
response = NULL,
features = NULL,
...
)
ml_decision_tree_regressor(
x,
formula = NULL,
max_depth = 5,
max_bins = 32,
min_instances_per_node = 1,
min_info_gain = 0,
impurity = "variance",
seed = NULL,
cache_node_ids = FALSE,
checkpoint_interval = 10,
max_memory_in_mb = 256,
variance_col = NULL,
features_col = "features",
label_col = "label",
prediction_col = "prediction",
uid = random_string("decision_tree_regressor_"),
...
)Arguments
- x
A
spark_connection,ml_pipeline, or atbl_spark.- formula
Used when
xis atbl_spark. R formula as a character string or a formula. This is used to transform the input dataframe before fitting, see ft_r_formula for details.- max_depth
Maximum depth of the tree (>= 0); that is, the maximum number of nodes separating any leaves from the root of the tree.
- max_bins
The maximum number of bins used for discretizing continuous features and for choosing how to split on features at each node. More bins give higher granularity.
- min_instances_per_node
Minimum number of instances each child must have after split.
- min_info_gain
Minimum information gain for a split to be considered at a tree node. Should be >= 0, defaults to 0.
- impurity
Criterion used for information gain calculation. Supported: "entropy" and "gini" (default) for classification and "variance" (default) for regression. For
ml_decision_tree, setting"auto"will default to the appropriate criterion based on model type.- seed
Seed for random numbers.
- thresholds
Thresholds in multi-class classification to adjust the probability of predicting each class. Array must have length equal to the number of classes, with values > 0 excepting that at most one value may be 0. The class with largest value
p/tis predicted, wherepis the original probability of that class andtis the class's threshold.- cache_node_ids
If
FALSE, the algorithm will pass trees to executors to match instances with nodes. IfTRUE, the algorithm will cache node IDs for each instance. Caching can speed up training of deeper trees. Defaults toFALSE.- checkpoint_interval
Set checkpoint interval (>= 1) or disable checkpoint (-1). E.g. 10 means that the cache will get checkpointed every 10 iterations, defaults to 10.
- max_memory_in_mb
Maximum memory in MB allocated to histogram aggregation. If too small, then 1 node will be split per iteration, and its aggregates may exceed this size. Defaults to 256.
- features_col
Features column name, as a length-one character vector. The column should be single vector column of numeric values. Usually this column is output by
ft_r_formula.- label_col
Label column name. The column should be a numeric column. Usually this column is output by
ft_r_formula.- prediction_col
Prediction column name.
- probability_col
Column name for predicted class conditional probabilities.
- raw_prediction_col
Raw prediction (a.k.a. confidence) column name.
- uid
A character string used to uniquely identify the ML estimator.
- ...
Optional arguments; see Details.
- type
The type of model to fit.
"regression"treats the response as a continuous variable, while"classification"treats the response as a categorical variable. When"auto"is used, the model type is inferred based on the response variable type – if it is a numeric type, then regression is used; classification otherwise.- variance_col
(Optional) Column name for the biased sample variance of prediction.
- response
(Deprecated) The name of the response column (as a length-one character vector.)
- features
(Deprecated) The name of features (terms) to use for the model fit.
Value
The object returned depends on the class of x. If it is a
spark_connection, the function returns a ml_estimator object. If
it is a ml_pipeline, it will return a pipeline with the predictor
appended to it. If a tbl_spark, it will return a tbl_spark with
the predictions added to it.
Details
ml_decision_tree is a wrapper around ml_decision_tree_regressor.tbl_spark and ml_decision_tree_classifier.tbl_spark and calls the appropriate method based on model type.
See also
Other ml algorithms:
ml_aft_survival_regression(),
ml_gbt_classifier(),
ml_generalized_linear_regression(),
ml_isotonic_regression(),
ml_linear_regression(),
ml_linear_svc(),
ml_logistic_regression(),
ml_multilayer_perceptron_classifier(),
ml_naive_bayes(),
ml_one_vs_rest(),
ml_random_forest_classifier()
Examples
if (FALSE) { # \dontrun{
sc <- spark_connect(master = "local")
iris_tbl <- sdf_copy_to(sc, iris, name = "iris_tbl", overwrite = TRUE)
partitions <- iris_tbl %>%
sdf_random_split(training = 0.7, test = 0.3, seed = 1111)
iris_training <- partitions$training
iris_test <- partitions$test
dt_model <- iris_training %>%
ml_decision_tree(Species ~ .)
pred <- ml_predict(dt_model, iris_test)
ml_multiclass_classification_evaluator(pred)
} # }