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  • LogisticRegressionMethod Enumeration

LogisticRegressionMethod Enumeration

Extreme Optimization Numerical Libraries for .NET Professional
Enumerates the variants of logistic regression that can be represented by a LogisticRegressionModel.

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

C#
VB
C++
F#
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public enum LogisticRegressionMethod
Public Enumeration LogisticRegressionMethod
public enum class LogisticRegressionMethod
type LogisticRegressionMethod
Members

  Member nameValueDescription
Automatic0 The type of regression is inferred from the dependent variable.
Binary1 Standard binary or binomial logistic regression
Nominal2 Multinomial logistic regression with two or more unordered outcomes.
See Also

Reference

Extreme.Statistics Namespace

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