public class RandomForest extends Object implements scala.Serializable, Logging
The settings for featureSubsetStrategy are based on the following references: - log2: tested in Breiman (2001) - sqrt: recommended by Breiman manual for random forests - The defaults of sqrt (classification) and onethird (regression) match the R randomForest package.
Constructor and Description |
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RandomForest(Strategy strategy,
int numTrees,
String featureSubsetStrategy,
int seed) |
Modifier and Type | Method and Description |
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static void |
initializeForcefully(boolean isInterpreter,
boolean silent) |
static void |
org$apache$spark$internal$Logging$$log__$eq(org.slf4j.Logger x$1) |
static org.slf4j.Logger |
org$apache$spark$internal$Logging$$log_() |
RandomForestModel |
run(RDD<LabeledPoint> input)
Method to train a decision tree model over an RDD
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static String[] |
supportedFeatureSubsetStrategies()
List of supported feature subset sampling strategies.
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static RandomForestModel |
trainClassifier(JavaRDD<LabeledPoint> input,
int numClasses,
java.util.Map<Integer,Integer> categoricalFeaturesInfo,
int numTrees,
String featureSubsetStrategy,
String impurity,
int maxDepth,
int maxBins,
int seed)
Java-friendly API for
org.apache.spark.mllib.tree.RandomForest.trainClassifier |
static RandomForestModel |
trainClassifier(RDD<LabeledPoint> input,
int numClasses,
scala.collection.immutable.Map<Object,Object> categoricalFeaturesInfo,
int numTrees,
String featureSubsetStrategy,
String impurity,
int maxDepth,
int maxBins,
int seed)
Method to train a decision tree model for binary or multiclass classification.
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static RandomForestModel |
trainClassifier(RDD<LabeledPoint> input,
Strategy strategy,
int numTrees,
String featureSubsetStrategy,
int seed)
Method to train a decision tree model for binary or multiclass classification.
|
static RandomForestModel |
trainRegressor(JavaRDD<LabeledPoint> input,
java.util.Map<Integer,Integer> categoricalFeaturesInfo,
int numTrees,
String featureSubsetStrategy,
String impurity,
int maxDepth,
int maxBins,
int seed)
Java-friendly API for
org.apache.spark.mllib.tree.RandomForest.trainRegressor |
static RandomForestModel |
trainRegressor(RDD<LabeledPoint> input,
scala.collection.immutable.Map<Object,Object> categoricalFeaturesInfo,
int numTrees,
String featureSubsetStrategy,
String impurity,
int maxDepth,
int maxBins,
int seed)
Method to train a decision tree model for regression.
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static RandomForestModel |
trainRegressor(RDD<LabeledPoint> input,
Strategy strategy,
int numTrees,
String featureSubsetStrategy,
int seed)
Method to train a decision tree model for regression.
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equals, getClass, hashCode, notify, notifyAll, toString, wait, wait, wait
initializeForcefully, initializeLogging, initializeLogIfNecessary, initializeLogIfNecessary, isTraceEnabled, log, logDebug, logDebug, logError, logError, logInfo, logInfo, logName, logTrace, logTrace, logWarning, logWarning
public RandomForest(Strategy strategy, int numTrees, String featureSubsetStrategy, int seed)
public static RandomForestModel trainClassifier(RDD<LabeledPoint> input, Strategy strategy, int numTrees, String featureSubsetStrategy, int seed)
input
- Training dataset: RDD of LabeledPoint
.
Labels should take values {0, 1, ..., numClasses-1}.strategy
- Parameters for training each tree in the forest.numTrees
- Number of trees in the random forest.featureSubsetStrategy
- Number of features to consider for splits at each node.
Supported values: "auto", "all", "sqrt", "log2", "onethird".
If "auto" is set, this parameter is set based on numTrees:
if numTrees == 1, set to "all";
if numTrees is greater than 1 (forest) set to "sqrt".seed
- Random seed for bootstrapping and choosing feature subsets.public static RandomForestModel trainClassifier(RDD<LabeledPoint> input, int numClasses, scala.collection.immutable.Map<Object,Object> categoricalFeaturesInfo, int numTrees, String featureSubsetStrategy, String impurity, int maxDepth, int maxBins, int seed)
input
- Training dataset: RDD of LabeledPoint
.
Labels should take values {0, 1, ..., numClasses-1}.numClasses
- Number of classes for classification.categoricalFeaturesInfo
- Map storing arity of categorical features. An entry (n to k)
indicates that feature n is categorical with k categories
indexed from 0: {0, 1, ..., k-1}.numTrees
- Number of trees in the random forest.featureSubsetStrategy
- Number of features to consider for splits at each node.
Supported values: "auto", "all", "sqrt", "log2", "onethird".
If "auto" is set, this parameter is set based on numTrees:
if numTrees == 1, set to "all";
if numTrees is greater than 1 (forest) set to "sqrt".impurity
- Criterion used for information gain calculation.
Supported values: "gini" (recommended) or "entropy".maxDepth
- Maximum depth of the tree (e.g. depth 0 means 1 leaf node, depth 1 means
1 internal node + 2 leaf nodes).
(suggested value: 4)maxBins
- Maximum number of bins used for splitting features
(suggested value: 100)seed
- Random seed for bootstrapping and choosing feature subsets.public static RandomForestModel trainClassifier(JavaRDD<LabeledPoint> input, int numClasses, java.util.Map<Integer,Integer> categoricalFeaturesInfo, int numTrees, String featureSubsetStrategy, String impurity, int maxDepth, int maxBins, int seed)
org.apache.spark.mllib.tree.RandomForest.trainClassifier
input
- (undocumented)numClasses
- (undocumented)categoricalFeaturesInfo
- (undocumented)numTrees
- (undocumented)featureSubsetStrategy
- (undocumented)impurity
- (undocumented)maxDepth
- (undocumented)maxBins
- (undocumented)seed
- (undocumented)public static RandomForestModel trainRegressor(RDD<LabeledPoint> input, Strategy strategy, int numTrees, String featureSubsetStrategy, int seed)
input
- Training dataset: RDD of LabeledPoint
.
Labels are real numbers.strategy
- Parameters for training each tree in the forest.numTrees
- Number of trees in the random forest.featureSubsetStrategy
- Number of features to consider for splits at each node.
Supported values: "auto", "all", "sqrt", "log2", "onethird".
If "auto" is set, this parameter is set based on numTrees:
if numTrees == 1, set to "all";
if numTrees is greater than 1 (forest) set to "onethird".seed
- Random seed for bootstrapping and choosing feature subsets.public static RandomForestModel trainRegressor(RDD<LabeledPoint> input, scala.collection.immutable.Map<Object,Object> categoricalFeaturesInfo, int numTrees, String featureSubsetStrategy, String impurity, int maxDepth, int maxBins, int seed)
input
- Training dataset: RDD of LabeledPoint
.
Labels are real numbers.categoricalFeaturesInfo
- Map storing arity of categorical features. An entry (n to k)
indicates that feature n is categorical with k categories
indexed from 0: {0, 1, ..., k-1}.numTrees
- Number of trees in the random forest.featureSubsetStrategy
- Number of features to consider for splits at each node.
Supported values: "auto", "all", "sqrt", "log2", "onethird".
If "auto" is set, this parameter is set based on numTrees:
if numTrees == 1, set to "all";
if numTrees is greater than 1 (forest) set to "onethird".impurity
- Criterion used for information gain calculation.
The only supported value for regression is "variance".maxDepth
- Maximum depth of the tree. (e.g., depth 0 means 1 leaf node, depth 1 means
1 internal node + 2 leaf nodes).
(suggested value: 4)maxBins
- Maximum number of bins used for splitting features.
(suggested value: 100)seed
- Random seed for bootstrapping and choosing feature subsets.public static RandomForestModel trainRegressor(JavaRDD<LabeledPoint> input, java.util.Map<Integer,Integer> categoricalFeaturesInfo, int numTrees, String featureSubsetStrategy, String impurity, int maxDepth, int maxBins, int seed)
org.apache.spark.mllib.tree.RandomForest.trainRegressor
input
- (undocumented)categoricalFeaturesInfo
- (undocumented)numTrees
- (undocumented)featureSubsetStrategy
- (undocumented)impurity
- (undocumented)maxDepth
- (undocumented)maxBins
- (undocumented)seed
- (undocumented)public static String[] supportedFeatureSubsetStrategies()
public static org.slf4j.Logger org$apache$spark$internal$Logging$$log_()
public static void org$apache$spark$internal$Logging$$log__$eq(org.slf4j.Logger x$1)
public static void initializeForcefully(boolean isInterpreter, boolean silent)
public RandomForestModel run(RDD<LabeledPoint> input)
input
- Training data: RDD of LabeledPoint
.