See: Description
Interface | Description |
---|---|
Discretizer |
Class | Description |
---|---|
Cluster |
Implements a cluster center that has a mean vector and a covariance matrix (and its inverse)
|
ClusteredDataGenerator |
Generates clustered data for testing machine learning algorithms
|
ContextualGMMParams |
Wrapper for contextual parameters for GMM training - includes various phone identity or class based groups
|
GaussianComponent |
Implements a single Gaussian component with a mean vector and a covariance matrix It also computes terms for pdf computation
out of this Gaussian component once the mean and covariance is specified
|
GMM |
Wrapper for a Gaussian Mixture Model
|
GMMClassifier |
TO DO: Implement a GMM based classifier that takes as input several GMMs and data and outputs the probability of each GMM
generating the data, the most likely GMM, etc
|
GmmDiscretizer |
This discretizes values according to a gaussian mixture model (gmm).
|
GMMTrainer |
Expectation-Maximization (EM) based GMM training
Reference: A.
|
GMMTrainerParams |
Wrapper class for GMM training parameters
|
KMeansClusteringTrainer |
K-Means clustering training algorithm
Reference: J.
|
KMeansClusteringTrainerParams |
Wrapper class for K-Means clustering training parameters
|
PolynomialCluster |
Implements a cluster center that has a mean
|
PolynomialHierarchicalClusteringTrainer |
Hierarchical clustering training algorithm
Reference: Stephen C.
|
PolynomialKMeansClusteringTrainer |
K-Means clustering training algorithm
Reference: J.
|
SFFS |
Sequential Floating Forward Search(SFFS) for selection of features Ref: Pudil, P., J.
|
SoP |
Contains the coefficients and factors of an equation of the form: if interceptTterm = TRUE solution = coeffs[0] +
coeffs[1]*factors[0] + coeffs[2]*factors[1] + ...
|
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