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  • Extreme.Statistics.Distributions
    • ArcsineDistribution Class
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  • Mean Property

BetaDistributionMean Property

Extreme Optimization Numerical Libraries for .NET Professional
Gets the mean or expectation value of the distribution.

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

C#
VB
C++
F#
Copy
public override double Mean { get; }
Public Overrides ReadOnly Property Mean As Double
	Get
public:
virtual property double Mean {
	double get () override;
}
abstract Mean : float with get
override Mean : float with get

Property Value

Type: Double
The mean of the distribution.
Remarks

The mean or expectation value of a distribution indicates its average or central value. The mean is only a very rudimentary characterization of a distribution. Two distributions with the same mean value can be very different.

See Also

Reference

BetaDistribution Class
Extreme.Statistics.Distributions Namespace
BetaDistributionVariance

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