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    • ClassificationModel(T) Class
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  • RegressionModel(T) Class
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  • Predict Method Overloads
    • Predict Method (IDataFrame, ModelInputFormat)
    • Predict Method (Matrix(T), ModelInputFormat)
    • Predict Method (Vector(T), ModelInputFormat)

RegressionModelTPredict Method

Extreme Optimization Numerical Libraries for .NET Professional
Overload List

  NameDescription
Public methodPredict(IDataFrame, ModelInputFormat)
Predicts the value of the output corresponding to the specified features.
Public methodPredict(MatrixT, ModelInputFormat)
Predicts the value of the output corresponding to the specified features.
Public methodPredict(VectorT, ModelInputFormat)
Predicts the value of the output corresponding to the specified features.
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See Also

Reference

RegressionModelT Class
Extreme.DataAnalysis.Models Namespace

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