class GeneralizedLinearRegressionTrainingSummary extends GeneralizedLinearRegressionSummary with Serializable
Summary of GeneralizedLinearRegression fitting and model.
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- @Since("2.0.0")
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- GeneralizedLinearRegression.scala
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-    lazy val aic: DoubleAkaike Information Criterion (AIC) for the fitted model. Akaike Information Criterion (AIC) for the fitted model. - Definition Classes
- GeneralizedLinearRegressionSummary
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- @Since("2.0.0")
 
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-    lazy val coefficientStandardErrors: Array[Double]Standard error of estimated coefficients and intercept. Standard error of estimated coefficients and intercept. This value is only available when the underlying WeightedLeastSquaresusing the "normal" solver.If GeneralizedLinearRegression.fitInterceptis set to true, then the last element returned corresponds to the intercept.- Annotations
- @Since("2.0.0")
 
-    lazy val degreesOfFreedom: LongDegrees of freedom. Degrees of freedom. - Definition Classes
- GeneralizedLinearRegressionSummary
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- @Since("2.0.0")
 
-    lazy val deviance: DoubleThe deviance for the fitted model. The deviance for the fitted model. - Definition Classes
- GeneralizedLinearRegressionSummary
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- @Since("2.0.0")
 
-    lazy val dispersion: DoubleThe dispersion of the fitted model. The dispersion of the fitted model. It is taken as 1.0 for the "binomial" and "poisson" families, and otherwise estimated by the residual Pearson's Chi-Squared statistic (which is defined as sum of the squares of the Pearson residuals) divided by the residual degrees of freedom. - Definition Classes
- GeneralizedLinearRegressionSummary
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- @Since("2.0.0")
 
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-    val model: GeneralizedLinearRegressionModelPrivate copy of model to ensure Params are not modified outside this class. Private copy of model to ensure Params are not modified outside this class. Coefficients is not a deep copy, but that is acceptable. - Attributes
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- Definition Classes
- GeneralizedLinearRegressionSummary
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- predictionCol must be set correctly before the value of model is set, and model must be set before predictions is set! 
 
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-    lazy val nullDeviance: DoubleThe deviance for the null model. The deviance for the null model. - Definition Classes
- GeneralizedLinearRegressionSummary
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- @Since("2.0.0")
 
-    lazy val numInstances: LongNumber of instances in DataFrame predictions. Number of instances in DataFrame predictions. - Definition Classes
- GeneralizedLinearRegressionSummary
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-    val numIterations: Int- Annotations
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-    lazy val pValues: Array[Double]Two-sided p-value of estimated coefficients and intercept. Two-sided p-value of estimated coefficients and intercept. This value is only available when the underlying WeightedLeastSquaresusing the "normal" solver.If GeneralizedLinearRegression.fitInterceptis set to true, then the last element returned corresponds to the intercept.- Annotations
- @Since("2.0.0")
 
-    val predictionCol: StringField in "predictions" which gives the predicted value of each instance. Field in "predictions" which gives the predicted value of each instance. This is set to a new column name if the original model's predictionColis not set.- Definition Classes
- GeneralizedLinearRegressionSummary
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-    val predictions: DataFramePredictions output by the model's transformmethod.Predictions output by the model's transformmethod.- Definition Classes
- GeneralizedLinearRegressionSummary
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-    lazy val rank: LongThe numeric rank of the fitted linear model. The numeric rank of the fitted linear model. - Definition Classes
- GeneralizedLinearRegressionSummary
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-    lazy val residualDegreeOfFreedom: LongThe residual degrees of freedom. The residual degrees of freedom. - Definition Classes
- GeneralizedLinearRegressionSummary
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- @Since("2.0.0")
 
-    lazy val residualDegreeOfFreedomNull: LongThe residual degrees of freedom for the null model. The residual degrees of freedom for the null model. - Definition Classes
- GeneralizedLinearRegressionSummary
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- @Since("2.0.0")
 
-    def residuals(residualsType: String): DataFrameGet the residuals of the fitted model by type. Get the residuals of the fitted model by type. - residualsType
- The type of residuals which should be returned. Supported options: deviance, pearson, working and response. 
 - Definition Classes
- GeneralizedLinearRegressionSummary
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- @Since("2.0.0")
 
-    def residuals(): DataFrameGet the default residuals (deviance residuals) of the fitted model. Get the default residuals (deviance residuals) of the fitted model. - Definition Classes
- GeneralizedLinearRegressionSummary
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-    val solver: String- Annotations
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-    lazy val tValues: Array[Double]T-statistic of estimated coefficients and intercept. T-statistic of estimated coefficients and intercept. This value is only available when the underlying WeightedLeastSquaresusing the "normal" solver.If GeneralizedLinearRegression.fitInterceptis set to true, then the last element returned corresponds to the intercept.- Annotations
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- (Since version 9)