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    • DendrogramNode Class
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  • GetDistancesToCenters Method

KMeansClusterAnalysisGetDistancesToCenters Method

Extreme Optimization Numerical Libraries for .NET Professional
Returns a VectorT that contains the distance of each observation to its cluster center.

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

C#
VB
C++
F#
Copy
public Vector<double> GetDistancesToCenters()
Public Function GetDistancesToCenters As Vector(Of Double)
public:
Vector<double>^ GetDistancesToCenters()
member GetDistancesToCenters : unit -> Vector<float> 

Return Value

Type: VectorDouble
A VectorT.
See Also

Reference

KMeansClusterAnalysis Class
Extreme.Statistics.Multivariate Namespace

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