VectorGaussian
VectorGaussian()
VectorGaussian(Int32)
VectorGaussian(VectorGaussian)
VectorGaussian(Double, Double)
VectorGaussian(Vector, PositiveDefiniteMatrix)
Dimension
IsPointMass
MeanTimesPrecision
Point
Precision
Clone()
Copy(VectorGaussian)
Equals(Object)
FromCursors(Vector, PositiveDefiniteMatrix)
FromDerivatives(Vector, Vector, PositiveDefiniteMatrix, Boolean)
FromMeanAndPrecision(Double, Double)
FromMeanAndPrecision(Vector, PositiveDefiniteMatrix)
FromMeanAndVariance(Double, Double)
FromMeanAndVariance(Vector, PositiveDefiniteMatrix)
FromNatural(Vector, PositiveDefiniteMatrix)
GetAverageLog(VectorGaussian)
GetHashCode()
GetLogAverageOf(VectorGaussian)
GetLogAverageOfPower(VectorGaussian, Double)
GetLogNormalizer()
GetLogProb(Vector)
GetLogProb(Vector, LowerTriangularMatrix, Vector)
GetLogProb(Vector, Vector, PositiveDefiniteMatrix)
GetLogProb(Vector, Vector, PositiveDefiniteMatrix, LowerTriangularMatrix, Vector)
GetLogProbPrep()
GetMarginal(Int32)
GetMarginal(Int32, VectorGaussian)
GetMean()
GetMean(Vector)
GetMean(Vector, PositiveDefiniteMatrix)
GetMeanAndPrecision(Vector, PositiveDefiniteMatrix)
GetMeanAndVariance(Vector, PositiveDefiniteMatrix)
GetMode()
GetVariance()
GetVariance(PositiveDefiniteMatrix)
IsProper()
IsUniform()
MaxDiff(Object)
PointMass(Double)
PointMass(Vector)
Sample()
Sample(Vector)
Sample(Vector, LowerTriangularMatrix)
Sample(Vector, PositiveDefiniteMatrix)
SampleFromMeanAndVariance(Vector, PositiveDefiniteMatrix)
SamplePrep()
SetMeanAndPrecision(Vector, PositiveDefiniteMatrix)
SetMeanAndVariance(Vector, PositiveDefiniteMatrix)
SetNatural(Vector, PositiveDefiniteMatrix)
SetTo(VectorGaussian)
SetToPointMass()
SetToPower(VectorGaussian, Double)
SetToProduct(VectorGaussian, VectorGaussian)
SetToRatio(VectorGaussian, VectorGaussian, Boolean)
SetToSum(Double, VectorGaussian, Double, VectorGaussian)
SetToUniform()
ToString()
Uniform(Int32)
WeightedSum<T>(T, Int32, Double, T, Double, T)
operator *(VectorGaussian, VectorGaussian)
operator /(VectorGaussian, VectorGaussian)
operator ^(VectorGaussian, Double)
net6.0
namespace Microsoft.ML.Probabilistic.Distributions
{
[DataContract]
[Quality(QualityBand.Mature)]
public class VectorGaussian : CanGetAverageLog<VectorGaussian>, CanGetLogAverageOf<VectorGaussian>, CanGetLogAverageOfPower<VectorGaussian>, CanGetLogNormalizer, CanGetLogProb<Vector>, CanGetLogProbPrep<VectorGaussian, Vector>, CanGetMean<DenseVector>, CanGetMeanAndVariance<Vector, PositiveDefiniteMatrix>, CanGetMode<DenseVector>, CanGetVariance<PositiveDefiniteMatrix>, CanSamplePrep<VectorGaussian, Vector>, CanSetMeanAndVariance<Vector, PositiveDefiniteMatrix>, HasPoint<Vector>, IDistribution, IDistribution<Vector>, Sampleable<Vector>, SettableToUniform, Diffable, SettableTo<VectorGaussian>, SettableToPower<VectorGaussian>, SettableToProduct<VectorGaussian>, SettableToProduct<VectorGaussian, VectorGaussian>, SettableToRatio<VectorGaussian>, SettableToRatio<VectorGaussian, VectorGaussian>, SettableToWeightedSum<VectorGaussian>, ICloneable
{
[Construction(new[] { "Point" }, UseWhen = "IsPointMass")]
public static VectorGaussian PointMass(Vector mean);
}
}
.NET | 5.06.07.08.09.010.0 |
---|---|
.NET Core | 2.02.12.23.03.1 |
.NET Framework | 4.6.14.6.24.74.7.14.7.24.84.8.1 |
.NET Standard | 2.02.1 |
Information specific to net6.0 | |
Assembly | Microsoft.ML.Probabilistic , Version=0.4.2403.801, PublicKeyToken=e4813102a62778da |
Referencing | Your project needs a package reference to |
Package | Microsoft.ML.Probabilistic (0.4.2403.801) netstandard2.0 |
Platform Restrictions | This API is supported on all platforms. |
- Built-in API
- Package-provided API