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  • Extreme.Statistics
    • Aggregator Class
    • AnovaModel Class
    • AnovaModelRow Class
    • AnovaRow Class
    • AnovaRowCollection Class
    • AnovaRowType Enumeration
    • AnovaTable Class
    • BoundaryIntervalBehavior Enumeration
    • CategoricalScale Class
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    • CategoricalVariable.CategoricalFilters Structure
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    • CellArray Class
    • ClassificationModel Class
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    • CollectionSortOrder Class
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    • Descriptives(T) Class
    • Filter Class
    • GeneralizedLinearModel Class
    • Histogram Class
    • HistogramBin Structure
    • HistogramBinCollection Class
    • HypothesisTests Class
    • InsufficientDataException Class
    • ITransformationModel Interface
    • Kernel Class
    • KernelDensity Class
    • KernelDensityBandwidthEstimator Enumeration
    • KeyVariable Class
    • KeyVariable(T) Class
    • LinearRegressionModel Class
    • LinkFunction Class
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    • ModelTerm Class
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    • NonlinearRegressionModel Class
    • NumericalScale Class
    • NumericalVariable Class
    • NumericalVariable.NumericalFilters Structure
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    • Observation Structure
    • ObservationCollection Class
    • OneWayAnovaModel Class
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    • Parameter Class
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    • PolynomialRegressionModel Class
    • RankTiebreaker Enumeration
    • RegressionModel Class
    • RegularizedRegressionModel Class
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    • TransformationModel Class
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  • RegularizedRegressionModel Class
    • RegularizedRegressionModel Constructors
    • Properties
    • Methods
  • RegularizedRegressionModel Constructors
    • RegularizedRegressionModel Constructor (IDataFrame, String)
    • RegularizedRegressionModel Constructor (NumericalVariable, NumericalVariable[])
    • RegularizedRegressionModel Constructor (Vector(Double), Matrix(Double))
    • RegularizedRegressionModel Constructor (Vector(Double), Vector(Double)[])
    • RegularizedRegressionModel Constructor (Vector, Matrix)
    • RegularizedRegressionModel Constructor (DataTable, String, String[])
    • RegularizedRegressionModel Constructor (IDataFrame, String, String[])
    • RegularizedRegressionModel Constructor (VariableCollection, String, String[])
  • RegularizedRegressionModel Constructor (Vector(Double), Vector(Double)[])
RegularizedRegressionModel Constructor (VectorDouble, VectorDouble)Extreme Optimization Numerical Libraries for .NET Professional
Constructs a new RegularizedRegressionModel.

Namespace: Extreme.Statistics
Assembly: Extreme.Numerics.Net40 (in Extreme.Numerics.Net40.dll) Version: 6.0.16073.0 (6.0.16312.0)
Syntax

C#
VB
C++
F#
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public RegularizedRegressionModel(
	Vector<double> dependentVariable,
	params Vector<double>[] independentVariables
)
Public Sub New ( 
	dependentVariable As Vector(Of Double),
	ParamArray independentVariables As Vector(Of Double)()
)
public:
RegularizedRegressionModel(
	Vector<double>^ dependentVariable, 
	... array<Vector<double>^>^ independentVariables
)
new : 
        dependentVariable : Vector<float> * 
        independentVariables : Vector<float>[] -> RegularizedRegressionModel

Parameters

dependentVariable
Type: Extreme.MathematicsVectorDouble
A vector that specifies the dependent variable.
independentVariables
Type: Extreme.MathematicsVectorDouble
An array of vectors that contain the independent variables.
Exceptions

ExceptionCondition
ArgumentNullExceptiondependentVariable is .
Version Information

Numerical Libraries

Supported in: 6.0
See Also

Reference

RegularizedRegressionModel Class
RegularizedRegressionModel Overload
Extreme.Statistics Namespace

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