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  • Extreme.Statistics.Tests
    • AndersonDarlingDistribution Class
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    • ChiSquareGoodnessOfFitTest Class
    • Exactness Enumeration
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    • HypothesisTest Class
    • HypothesisType Enumeration
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    • MannWhitneyTest(T) Class
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    • OneSampleKolmogorovSmirnovTest Class
    • OneSampleTest Class
    • OneSampleTest(T) Class
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    • OneSampleZTest Class
    • OneSampleZTestOfProportion Class
    • RunsTest(T) Class
    • SamplePairing Enumeration
    • ShapiroWilkTest Class
    • SimpleHypothesisTest Class
    • StuartMaxwellTest Class
    • StudentizedRangeDistribution Class
    • TwoSampleKolmogorovSmirnovTest Class
    • TwoSampleTest Class
    • TwoSampleTest(T) Class
    • TwoSampleTTest Class
    • TwoSampleZTest Class
  • HypothesisTest Class
    • HypothesisTest Constructors
    • Properties
    • Methods
    • Fields
  • Methods
    • CalculateStatistic Method
    • GetConfidenceInterval Method Overloads
    • GetLowerCriticalValue Method Overloads
    • GetPValue Method
    • GetUpperCriticalValue Method Overloads
    • Reject Method Overloads
    • Summarize Method Overloads
    • ToString Method

HypothesisTest Methods

Extreme Optimization Numerical Libraries for .NET Professional

The HypothesisTest type exposes the following members.

Methods

  NameDescription
Protected methodCalculateStatistic
Evaluates the test statistic.
Public methodEquals
Determines whether the specified object is equal to the current object.
(Inherited from Object.)
Protected methodFinalize
Allows an object to try to free resources and perform other cleanup operations before it is reclaimed by garbage collection.
(Inherited from Object.)
Public methodGetConfidenceInterval
Returns the confidence interval for the test parameter for the default confidence level.
Public methodGetConfidenceInterval(Double)
Returns the confidence interval for the test parameter for the specified confidence level.
Public methodGetHashCode
Serves as the default hash function.
(Inherited from Object.)
Public methodGetLowerCriticalValue
Gets the lower critical value for the hypothesis test's current significance level.
Public methodGetLowerCriticalValue(Double)
Gets the lower critical value for the hypothesis test at the specified significance level.
Public methodGetPValue
Gets the probability that the test statistic would take on the calculated value under the specified alternate hypothesis.
Public methodGetType
Gets the Type of the current instance.
(Inherited from Object.)
Public methodGetUpperCriticalValue
Gets the upper critical value for the test statistic at the hypothesis test's current significance level.
Public methodGetUpperCriticalValue(Double)
Gets the upper critical value for the test statistic at the specified significance level.
Protected methodMemberwiseClone
Creates a shallow copy of the current Object.
(Inherited from Object.)
Public methodReject
Returns whether the null hypothesis is rejected using the default significance level.
Public methodReject(Double)
Returns whether the null hypothesis is rejected using the specified significance level.
Public methodSummarize
Returns a string containing a human-readable summary of the object.
Public methodSummarize(SummaryOptions)
Returns a string containing a human-readable summary of the object using the specified options.
Public methodToString
Returns a string that represents the current object.
(Overrides ObjectToString.)
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See Also

Reference

HypothesisTest Class
Extreme.Statistics.Tests Namespace

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