Package org.apache.spark.ml.regression
Class GBTRegressionModel
Object
org.apache.spark.ml.PipelineStage
org.apache.spark.ml.Transformer
org.apache.spark.ml.Model<M>
org.apache.spark.ml.PredictionModel<FeaturesType,M>
org.apache.spark.ml.regression.RegressionModel<Vector,GBTRegressionModel>
org.apache.spark.ml.regression.GBTRegressionModel
- All Implemented Interfaces:
Serializable,org.apache.spark.internal.Logging,Params,HasCheckpointInterval,HasFeaturesCol,HasLabelCol,HasMaxIter,HasPredictionCol,HasSeed,HasStepSize,HasValidationIndicatorCol,HasWeightCol,PredictorParams,DecisionTreeParams,GBTParams,GBTRegressorParams,HasVarianceImpurity,TreeEnsembleModel<DecisionTreeRegressionModel>,TreeEnsembleParams,TreeEnsembleRegressorParams,TreeRegressorParams,Identifiable,MLWritable
public class GBTRegressionModel
extends RegressionModel<Vector,GBTRegressionModel>
implements GBTRegressorParams, TreeEnsembleModel<DecisionTreeRegressionModel>, MLWritable, Serializable
Gradient-Boosted Trees (GBTs)
model for regression.
It supports both continuous and categorical features.
param: _trees Decision trees in the ensemble.
param: _treeWeights Weights for the decision trees in the ensemble.
- See Also:
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Nested Class Summary
Nested classes/interfaces inherited from interface org.apache.spark.internal.Logging
org.apache.spark.internal.Logging.LogStringContext, org.apache.spark.internal.Logging.SparkShellLoggingFilter -
Constructor Summary
ConstructorsConstructorDescriptionGBTRegressionModel(String uid, DecisionTreeRegressionModel[] _trees, double[] _treeWeights) Construct a GBTRegressionModel -
Method Summary
Modifier and TypeMethodDescriptionfinal BooleanParamIf false, the algorithm will pass trees to executors to match instances with nodes.final IntParamParam for set checkpoint interval (>= 1) or disable checkpoint (-1).Creates a copy of this instance with the same UID and some extra params.longdouble[]evaluateEachIteration(Dataset<?> dataset, String loss) Method to compute error or loss for every iteration of gradient boosting.The number of features to consider for splits at each tree node.intNumber of trees in ensembleimpurity()Criterion used for information gain calculation (case-insensitive).leafCol()Leaf indices column name.static GBTRegressionModellossType()Loss function which GBT tries to minimize.final IntParammaxBins()Maximum number of bins used for discretizing continuous features and for choosing how to split on features at each node.final IntParammaxDepth()Maximum depth of the tree (nonnegative).final IntParammaxIter()Param for maximum number of iterations (>= 0).final IntParamMaximum memory in MB allocated to histogram aggregation.final DoubleParamMinimum information gain for a split to be considered at a tree node.final IntParamMinimum number of instances each child must have after split.final DoubleParamMinimum fraction of the weighted sample count that each child must have after split.intReturns the number of features the model was trained on.doublePredict label for the given features.static MLReader<GBTRegressionModel>read()final LongParamseed()Param for random seed.final DoubleParamstepSize()Param for Step size (a.k.a.final DoubleParamFraction of the training data used for learning each decision tree, in range (0, 1].toString()Summary of the modelintTotal number of nodes, summed over all trees in the ensemble.Transforms dataset by reading fromPredictionModel.featuresCol(), callingpredict, and storing the predictions as a new columnPredictionModel.predictionCol().transformSchema(StructType schema) Check transform validity and derive the output schema from the input schema.trees()Trees in this ensemble.double[]Weights for each tree, zippable withTreeEnsembleModel.trees()uid()An immutable unique ID for the object and its derivatives.Param for name of the column that indicates whether each row is for training or for validation.final DoubleParamThreshold for stopping early when fit with validation is used.Param for weight column name.write()Returns anMLWriterinstance for this ML instance.Methods inherited from class org.apache.spark.ml.PredictionModel
featuresCol, labelCol, predictionCol, setFeaturesCol, setPredictionColMethods inherited from class org.apache.spark.ml.Transformer
transform, transform, transformMethods inherited from class org.apache.spark.ml.PipelineStage
paramsMethods inherited from class java.lang.Object
equals, getClass, hashCode, notify, notifyAll, wait, wait, waitMethods inherited from interface org.apache.spark.ml.tree.DecisionTreeParams
getCacheNodeIds, getLeafCol, getMaxBins, getMaxDepth, getMaxMemoryInMB, getMinInfoGain, getMinInstancesPerNode, getMinWeightFractionPerNode, getOldStrategy, setLeafColMethods inherited from interface org.apache.spark.ml.tree.GBTParams
getOldBoostingStrategy, getValidationTolMethods inherited from interface org.apache.spark.ml.tree.GBTRegressorParams
convertToOldLossType, getLossType, getOldLossTypeMethods inherited from interface org.apache.spark.ml.param.shared.HasCheckpointInterval
getCheckpointIntervalMethods inherited from interface org.apache.spark.ml.param.shared.HasFeaturesCol
featuresCol, getFeaturesColMethods inherited from interface org.apache.spark.ml.param.shared.HasLabelCol
getLabelCol, labelColMethods inherited from interface org.apache.spark.ml.param.shared.HasMaxIter
getMaxIterMethods inherited from interface org.apache.spark.ml.param.shared.HasPredictionCol
getPredictionCol, predictionColMethods inherited from interface org.apache.spark.ml.param.shared.HasStepSize
getStepSizeMethods inherited from interface org.apache.spark.ml.param.shared.HasValidationIndicatorCol
getValidationIndicatorColMethods inherited from interface org.apache.spark.ml.tree.HasVarianceImpurity
getImpurity, getOldImpurityMethods inherited from interface org.apache.spark.ml.param.shared.HasWeightCol
getWeightColMethods inherited from interface org.apache.spark.internal.Logging
initializeForcefully, initializeLogIfNecessary, initializeLogIfNecessary, initializeLogIfNecessary$default$2, isTraceEnabled, log, logBasedOnLevel, logDebug, logDebug, logDebug, logDebug, logError, logError, logError, logError, logInfo, logInfo, logInfo, logInfo, logName, LogStringContext, logTrace, logTrace, logTrace, logTrace, logWarning, logWarning, logWarning, logWarning, org$apache$spark$internal$Logging$$log_, org$apache$spark$internal$Logging$$log__$eq, withLogContextMethods inherited from interface org.apache.spark.ml.util.MLWritable
saveMethods inherited from interface org.apache.spark.ml.param.Params
clear, copyValues, defaultCopy, defaultParamMap, estimateMatadataSize, explainParam, explainParams, extractParamMap, extractParamMap, get, getDefault, getOrDefault, getParam, hasDefault, hasParam, isDefined, isSet, onParamChange, paramMap, params, set, set, set, setDefault, setDefault, shouldOwnMethods inherited from interface org.apache.spark.ml.tree.TreeEnsembleModel
getEstimatedSize, getLeafField, getTree, javaTreeWeights, predictLeaf, toDebugStringMethods inherited from interface org.apache.spark.ml.tree.TreeEnsembleParams
getFeatureSubsetStrategy, getOldStrategy, getSubsamplingRateMethods inherited from interface org.apache.spark.ml.tree.TreeEnsembleRegressorParams
validateAndTransformSchema
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Constructor Details
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GBTRegressionModel
Construct a GBTRegressionModel- Parameters:
_trees- Decision trees in the ensemble._treeWeights- Weights for the decision trees in the ensemble.uid- (undocumented)
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Method Details
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read
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load
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totalNumNodes
public int totalNumNodes()Description copied from interface:TreeEnsembleModelTotal number of nodes, summed over all trees in the ensemble.- Specified by:
totalNumNodesin interfaceTreeEnsembleModel<DecisionTreeRegressionModel>
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lossType
Description copied from interface:GBTRegressorParamsLoss function which GBT tries to minimize. (case-insensitive) Supported: "squared" (L2) and "absolute" (L1) (default = squared)- Specified by:
lossTypein interfaceGBTRegressorParams- Returns:
- (undocumented)
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impurity
Description copied from interface:HasVarianceImpurityCriterion used for information gain calculation (case-insensitive). This impurity type is used in DecisionTreeRegressor, RandomForestRegressor, GBTRegressor and GBTClassifier (since GBTClassificationModel is internally composed of DecisionTreeRegressionModels). Supported: "variance". (default = variance)- Specified by:
impurityin interfaceHasVarianceImpurity- Returns:
- (undocumented)
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validationTol
Description copied from interface:GBTParamsThreshold for stopping early when fit with validation is used. (This parameter is ignored when fit without validation is used.) The decision to stop early is decided based on this logic: If the current loss on the validation set is greater than 0.01, the diff of validation error is compared to relative tolerance which is validationTol * (current loss on the validation set). If the current loss on the validation set is less than or equal to 0.01, the diff of validation error is compared to absolute tolerance which is validationTol * 0.01.- Specified by:
validationTolin interfaceGBTParams- Returns:
- (undocumented)
- See Also:
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stepSize
Description copied from interface:GBTParamsParam for Step size (a.k.a. learning rate) in interval (0, 1] for shrinking the contribution of each estimator. (default = 0.1)- Specified by:
stepSizein interfaceGBTParams- Specified by:
stepSizein interfaceHasStepSize- Returns:
- (undocumented)
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validationIndicatorCol
Description copied from interface:HasValidationIndicatorColParam for name of the column that indicates whether each row is for training or for validation. False indicates training; true indicates validation..- Specified by:
validationIndicatorColin interfaceHasValidationIndicatorCol- Returns:
- (undocumented)
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maxIter
Description copied from interface:HasMaxIterParam for maximum number of iterations (>= 0).- Specified by:
maxIterin interfaceHasMaxIter- Returns:
- (undocumented)
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subsamplingRate
Description copied from interface:TreeEnsembleParamsFraction of the training data used for learning each decision tree, in range (0, 1]. (default = 1.0)- Specified by:
subsamplingRatein interfaceTreeEnsembleParams- Returns:
- (undocumented)
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featureSubsetStrategy
Description copied from interface:TreeEnsembleParamsThe number of features to consider for splits at each tree node. Supported options: - "auto": Choose automatically for task: If numTrees == 1, set to "all." If numTrees greater than 1 (forest), set to "sqrt" for classification and to "onethird" for regression. - "all": use all features - "onethird": use 1/3 of the features - "sqrt": use sqrt(number of features) - "log2": use log2(number of features) - "n": when n is in the range (0, 1.0], use n * number of features. When n is in the range (1, number of features), use n features. (default = "auto")These various settings 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.
- Specified by:
featureSubsetStrategyin interfaceTreeEnsembleParams- Returns:
- (undocumented)
- See Also:
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leafCol
Description copied from interface:DecisionTreeParamsLeaf indices column name. Predicted leaf index of each instance in each tree by preorder. (default = "")- Specified by:
leafColin interfaceDecisionTreeParams- Returns:
- (undocumented)
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maxDepth
Description copied from interface:DecisionTreeParamsMaximum depth of the tree (nonnegative). E.g., depth 0 means 1 leaf node; depth 1 means 1 internal node + 2 leaf nodes. (default = 5)- Specified by:
maxDepthin interfaceDecisionTreeParams- Returns:
- (undocumented)
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maxBins
Description copied from interface:DecisionTreeParamsMaximum number of bins used for discretizing continuous features and for choosing how to split on features at each node. More bins give higher granularity. Must be at least 2 and at least number of categories in any categorical feature. (default = 32)- Specified by:
maxBinsin interfaceDecisionTreeParams- Returns:
- (undocumented)
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minInstancesPerNode
Description copied from interface:DecisionTreeParamsMinimum number of instances each child must have after split. If a split causes the left or right child to have fewer than minInstancesPerNode, the split will be discarded as invalid. Must be at least 1. (default = 1)- Specified by:
minInstancesPerNodein interfaceDecisionTreeParams- Returns:
- (undocumented)
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minWeightFractionPerNode
Description copied from interface:DecisionTreeParamsMinimum fraction of the weighted sample count that each child must have after split. If a split causes the fraction of the total weight in the left or right child to be less than minWeightFractionPerNode, the split will be discarded as invalid. Should be in the interval [0.0, 0.5). (default = 0.0)- Specified by:
minWeightFractionPerNodein interfaceDecisionTreeParams- Returns:
- (undocumented)
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minInfoGain
Description copied from interface:DecisionTreeParamsMinimum information gain for a split to be considered at a tree node. Should be at least 0.0. (default = 0.0)- Specified by:
minInfoGainin interfaceDecisionTreeParams- Returns:
- (undocumented)
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maxMemoryInMB
Description copied from interface:DecisionTreeParamsMaximum 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. (default = 256 MB)- Specified by:
maxMemoryInMBin interfaceDecisionTreeParams- Returns:
- (undocumented)
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cacheNodeIds
Description copied from interface:DecisionTreeParamsIf false, the algorithm will pass trees to executors to match instances with nodes. If true, the algorithm will cache node IDs for each instance. Caching can speed up training of deeper trees. Users can set how often should the cache be checkpointed or disable it by setting checkpointInterval. (default = false)- Specified by:
cacheNodeIdsin interfaceDecisionTreeParams- Returns:
- (undocumented)
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weightCol
Description copied from interface:HasWeightColParam for weight column name. If this is not set or empty, we treat all instance weights as 1.0.- Specified by:
weightColin interfaceHasWeightCol- Returns:
- (undocumented)
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seed
Description copied from interface:HasSeedParam for random seed. -
checkpointInterval
Description copied from interface:HasCheckpointIntervalParam for set checkpoint interval (>= 1) or disable checkpoint (-1). E.g. 10 means that the cache will get checkpointed every 10 iterations. Note: this setting will be ignored if the checkpoint directory is not set in the SparkContext.- Specified by:
checkpointIntervalin interfaceHasCheckpointInterval- Returns:
- (undocumented)
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uid
Description copied from interface:IdentifiableAn immutable unique ID for the object and its derivatives.- Specified by:
uidin interfaceIdentifiable- Returns:
- (undocumented)
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numFeatures
public int numFeatures()Description copied from class:PredictionModelReturns the number of features the model was trained on. If unknown, returns -1- Overrides:
numFeaturesin classPredictionModel<Vector,GBTRegressionModel>
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estimatedSize
public long estimatedSize() -
trees
Description copied from interface:TreeEnsembleModelTrees in this ensemble. Warning: These have null parent Estimators.- Specified by:
treesin interfaceTreeEnsembleModel<DecisionTreeRegressionModel>
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getNumTrees
public int getNumTrees()Number of trees in ensemble- Returns:
- (undocumented)
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treeWeights
public double[] treeWeights()Description copied from interface:TreeEnsembleModelWeights for each tree, zippable withTreeEnsembleModel.trees()- Specified by:
treeWeightsin interfaceTreeEnsembleModel<DecisionTreeRegressionModel>
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transformSchema
Description copied from class:PipelineStageCheck transform validity and derive the output schema from the input schema.We check validity for interactions between parameters during
transformSchemaand raise an exception if any parameter value is invalid. Parameter value checks which do not depend on other parameters are handled byParam.validate().Typical implementation should first conduct verification on schema change and parameter validity, including complex parameter interaction checks.
- Overrides:
transformSchemain classPredictionModel<Vector,GBTRegressionModel> - Parameters:
schema- (undocumented)- Returns:
- (undocumented)
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transform
Description copied from class:PredictionModelTransforms dataset by reading fromPredictionModel.featuresCol(), callingpredict, and storing the predictions as a new columnPredictionModel.predictionCol().- Overrides:
transformin classPredictionModel<Vector,GBTRegressionModel> - Parameters:
dataset- input dataset- Returns:
- transformed dataset with
PredictionModel.predictionCol()of typeDouble
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predict
Description copied from class:PredictionModelPredict label for the given features. This method is used to implementtransform()and outputPredictionModel.predictionCol().- Specified by:
predictin classPredictionModel<Vector,GBTRegressionModel> - Parameters:
features- (undocumented)- Returns:
- (undocumented)
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copy
Description copied from interface:ParamsCreates a copy of this instance with the same UID and some extra params. Subclasses should implement this method and set the return type properly. SeedefaultCopy().- Specified by:
copyin interfaceParams- Specified by:
copyin classModel<GBTRegressionModel>- Parameters:
extra- (undocumented)- Returns:
- (undocumented)
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toString
Description copied from interface:TreeEnsembleModelSummary of the model- Specified by:
toStringin interfaceIdentifiable- Specified by:
toStringin interfaceTreeEnsembleModel<DecisionTreeRegressionModel>- Overrides:
toStringin classObject
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featureImportances
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evaluateEachIteration
Method to compute error or loss for every iteration of gradient boosting.- Parameters:
dataset- Dataset for validation.loss- The loss function used to compute error. Supported options: squared, absolute- Returns:
- (undocumented)
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write
Description copied from interface:MLWritableReturns anMLWriterinstance for this ML instance.- Specified by:
writein interfaceMLWritable- Returns:
- (undocumented)
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