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  • Extreme.Statistics
    • AnovaModel Class
    • AnovaModelRow Class
    • AnovaRow Class
    • AnovaRowType Enumeration
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    • LogisticRegressionMethod Enumeration
    • LogisticRegressionModel Class
    • ModelFamily Class
    • NearestCorrelationMatrixAlgorithm Enumeration
    • NonlinearRegressionModel Class
    • OneWayAnovaModel Class
    • OneWayRAnovaModel Class
    • PolynomialRegressionModel Class
    • RegularizedRegressionModel Class
    • ScaleFittingMethod Enumeration
    • SimpleRegressionKind Enumeration
    • SimpleRegressionModel Class
    • Stats Class
    • StepwiseCriterion Enumeration
    • StepwiseOptions Class
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    • TestOfHomogeneityOfVariances Enumeration
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  • Descriptives(T) Class
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  • Properties
    • CentralSumOfSquares Property
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    • Maximum Property
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  • Count Property

DescriptivesTCount Property

Extreme Optimization Numerical Libraries for .NET Professional
Gets the number of actual values.

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

C#
VB
C++
F#
Copy
public double Count { get; }
Public ReadOnly Property Count As Double
	Get
public:
property double Count {
	double get ();
}
member Count : float with get

Property Value

Type: Double
See Also

Reference

DescriptivesT Class
Extreme.Statistics Namespace

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