See: Description
| Class | Description |
|---|---|
| ChiDistanceFunction |
χ distance function, symmetric version.
|
| ChiDistanceFunction.Parameterizer |
Parameterization class, using the static instance.
|
| ChiSquaredDistanceFunction |
χ² distance function, symmetric version.
|
| ChiSquaredDistanceFunction.Parameterizer |
Parameterization class, using the static instance.
|
| FisherRaoDistanceFunction |
Fisher-Rao riemannian metric for (discrete) probability distributions.
|
| FisherRaoDistanceFunction.Parameterizer |
Parameterization class.
|
| HellingerDistanceFunction |
Hellinger metric / affinity / kernel, Bhattacharyya coefficient, fidelity
similarity, Matusita distance, Hellinger-Kakutani metric on a probability
distribution.
|
| HellingerDistanceFunction.Parameterizer |
Parameterization class.
|
| JeffreyDivergenceDistanceFunction |
Jeffrey Divergence for
NumberVectors is a symmetric, smoothened
version of the KullbackLeiblerDivergenceAsymmetricDistanceFunction. |
| JeffreyDivergenceDistanceFunction.Parameterizer |
Parameterization class, using the static instance.
|
| JensenShannonDivergenceDistanceFunction |
Jensen-Shannon Divergence for
NumberVectors is a symmetric,
smoothened version of the
KullbackLeiblerDivergenceAsymmetricDistanceFunction. |
| JensenShannonDivergenceDistanceFunction.Parameterizer |
Parameterization class, using the static instance.
|
| KullbackLeiblerDivergenceAsymmetricDistanceFunction |
Kullback-Leibler divergence, also known as relative entropy,
information deviation, or just KL-distance (albeit asymmetric).
|
| KullbackLeiblerDivergenceAsymmetricDistanceFunction.Parameterizer |
Parameterization class, using the static instance.
|
| KullbackLeiblerDivergenceReverseAsymmetricDistanceFunction |
Kullback-Leibler divergence, also known as relative entropy, information
deviation or just KL-distance (albeit asymmetric).
|
| KullbackLeiblerDivergenceReverseAsymmetricDistanceFunction.Parameterizer |
Parameterization class, using the static instance.
|
| SqrtJensenShannonDivergenceDistanceFunction |
The square root of Jensen-Shannon divergence is a metric.
|
| SqrtJensenShannonDivergenceDistanceFunction.Parameterizer |
Parameterization class, using the static instance.
|
| TriangularDiscriminationDistanceFunction |
Triangular Discrimination has relatively tight upper and lower bounds to the
Jensen-Shannon divergence, but is much less expensive.
|
| TriangularDiscriminationDistanceFunction.Parameterizer |
Parameterization class, using the static instance.
|
| TriangularDistanceFunction |
Triangular Distance has relatively tight upper and lower bounds to the
(square root of the) Jensen-Shannon divergence, but is much less expensive.
|
| TriangularDistanceFunction.Parameterizer |
Parameterization class, using the static instance.
|
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