class RidgeRegressionModel extends GeneralizedLinearModel with RegressionModel with Serializable with Saveable with PMMLExportable
Regression model trained using RidgeRegression.
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- @Since("0.8.0")
- Source
- RidgeRegression.scala
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- RidgeRegressionModel
- PMMLExportable
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- RegressionModel
- GeneralizedLinearModel
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- val intercept: Double
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- RidgeRegressionModel → GeneralizedLinearModel
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- @Since("0.8.0")
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- def predict(testData: JavaRDD[Vector]): JavaRDD[Double]
Predict values for examples stored in a JavaRDD.
Predict values for examples stored in a JavaRDD.
- testData
JavaRDD representing data points to be predicted
- returns
a JavaRDD[java.lang.Double] where each entry contains the corresponding prediction
- Definition Classes
- RegressionModel
- Annotations
- @Since("1.0.0")
- def predict(testData: Vector): Double
Predict values for a single data point using the model trained.
Predict values for a single data point using the model trained.
- testData
array representing a single data point
- returns
Double prediction from the trained model
- Definition Classes
- GeneralizedLinearModel
- Annotations
- @Since("1.0.0")
- def predict(testData: RDD[Vector]): RDD[Double]
Predict values for the given data set using the model trained.
Predict values for the given data set using the model trained.
- testData
RDD representing data points to be predicted
- returns
RDD[Double] where each entry contains the corresponding prediction
- Definition Classes
- GeneralizedLinearModel
- Annotations
- @Since("1.0.0")
- def predictPoint(dataMatrix: Vector, weightMatrix: Vector, intercept: Double): Double
Predict the result given a data point and the weights learned.
Predict the result given a data point and the weights learned.
- dataMatrix
Row vector containing the features for this data point
- weightMatrix
Column vector containing the weights of the model
- intercept
Intercept of the model.
- Attributes
- protected
- Definition Classes
- RidgeRegressionModel → GeneralizedLinearModel
- def save(sc: SparkContext, path: String): Unit
Save this model to the given path.
Save this model to the given path.
This saves:
- human-readable (JSON) model metadata to path/metadata/
- Parquet formatted data to path/data/
The model may be loaded using
Loader.load
.- sc
Spark context used to save model data.
- path
Path specifying the directory in which to save this model. If the directory already exists, this method throws an exception.
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- RidgeRegressionModel → Saveable
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- @Since("1.3.0")
- final def synchronized[T0](arg0: => T0): T0
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- def toPMML(): String
Export the model to a String in PMML format
Export the model to a String in PMML format
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- PMMLExportable
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- @Since("1.4.0")
- def toPMML(outputStream: OutputStream): Unit
Export the model to the OutputStream in PMML format
Export the model to the OutputStream in PMML format
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- PMMLExportable
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- @Since("1.4.0")
- def toPMML(sc: SparkContext, path: String): Unit
Export the model to a directory on a distributed file system in PMML format
Export the model to a directory on a distributed file system in PMML format
- Definition Classes
- PMMLExportable
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- @Since("1.4.0")
- def toPMML(localPath: String): Unit
Export the model to a local file in PMML format
Export the model to a local file in PMML format
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- PMMLExportable
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- def toString(): String
Print a summary of the model.
Print a summary of the model.
- Definition Classes
- GeneralizedLinearModel → AnyRef → Any
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- val weights: Vector
- Definition Classes
- RidgeRegressionModel → GeneralizedLinearModel
- Annotations
- @Since("1.0.0")
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- @throws(classOf[java.lang.Throwable]) @Deprecated
- Deprecated
(Since version 9)