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    • ClassificationModel(T) Class
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  • PredictCore Method Overloads
    • PredictCore Method (Matrix(T), Boolean)
    • PredictCore Method (Vector(T), Boolean)
  • PredictCore Method (Vector(T), Boolean)

ClassificationModelTPredictCore Method (VectorT, Boolean)

Extreme Optimization Numerical Libraries for .NET Professional
Predicts the class based on the specified values of the features.

Namespace:  Extreme.DataAnalysis.Models
Assembly:  Extreme.Numerics (in Extreme.Numerics.dll) Version: 8.1.1
Syntax

C#
VB
C++
F#
Copy
protected virtual int PredictCore(
	Vector<T> features,
	bool modelFeaturesOnly
)
Protected Overridable Function PredictCore ( 
	features As Vector(Of T),
	modelFeaturesOnly As Boolean
) As Integer
protected:
virtual int PredictCore(
	Vector<T>^ features, 
	bool modelFeaturesOnly
)
abstract PredictCore : 
        features : Vector<'T> * 
        modelFeaturesOnly : bool -> int 
override PredictCore : 
        features : Vector<'T> * 
        modelFeaturesOnly : bool -> int 

Parameters

features
Type: Extreme.MathematicsVectorT
A vector containing the values for the independent variables.
modelFeaturesOnly
Type: SystemBoolean
Specifies whether features includes only features that appear in the fitted model.

Return Value

Type: Int32
The class with the highest probability for the specified features as predicted by the model.
Exceptions

ExceptionCondition
ArgumentNullExceptionfeatures is .
DimensionMismatchException

The length of features does not match the required number of values.

See Also

Reference

ClassificationModelT Class
PredictCore Overload
Extreme.DataAnalysis.Models Namespace

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