case class BaggedClassificationResult(predictions: Seq[PredictionResult[Any]]) extends BaggedResult[Any] with Product with Serializable
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- new BaggedClassificationResult(predictions: Seq[PredictionResult[Any]])
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- lazy val expected: Seq[Any]
- lazy val expectedMatrix: Seq[Seq[Any]]
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def
getExpected(): Seq[Any]
Return the majority vote vote
Return the majority vote vote
- returns
expected value of each prediction
- Definition Classes
- BaggedClassificationResult → PredictionResult
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def
getGradient(): Option[Seq[Vector[Double]]]
Average the gradients from the models in the ensemble
Average the gradients from the models in the ensemble
- returns
the gradient of each prediction as a vector of doubles
- Definition Classes
- BaggedResult → PredictionResult
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def
getImportanceScores(): Option[Seq[Seq[Double]]]
Get the training row scores for each prediction
Get the training row scores for each prediction
- returns
sequence (over predictions) of sequence (over training rows) of importances
- Definition Classes
- PredictionResult
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def
getInfluenceScores(actuals: Seq[Any]): Option[Seq[Seq[Double]]]
Get the improvement (positive) or damage (negative) due to each training row on a prediction
Get the improvement (positive) or damage (negative) due to each training row on a prediction
- actuals
to assess the improvement or damage against
- returns
Sequence (over predictions) of sequence (over training rows) of influence
- Definition Classes
- PredictionResult
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def
getUncertainty(includeNoise: Boolean = true): Option[Seq[Any]]
Get the "uncertainty" of the prediction
Get the "uncertainty" of the prediction
For regression, this should be the TotalError if non-observational and the StdDevObs if observational
- returns
uncertainty of each prediction
- Definition Classes
- BaggedClassificationResult → PredictionResult
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val
predictions: Seq[PredictionResult[Any]]
- Definition Classes
- BaggedClassificationResult → BaggedResult
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- lazy val uncertainty: Seq[Map[Any, Double]]
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