Méthode | Description | |
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BaumWelchLearningBase ( IHiddenMarkovModel model ) : System |
Initializes a new instance of the BaumWelchLearningBase class.
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ComputeForwardBackward ( int index, double &fwd, double &bwd, double &scaling ) : void |
Computes the forward and backward probabilities matrices for a given observation referenced by its index in the input training data.
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ComputeKsi ( int index, double fwd, double bwd, double scaling ) : void |
Computes the ksi matrix of probabilities for a given observation referenced by its index in the input training data.
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HasConverged ( double oldLikelihood, double newLikelihood, int currentIteration ) : bool |
Checks if a model has converged given the likelihoods between two iterations of the Baum-Welch algorithm and a criteria for convergence.
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Run ( |
Runs the Baum-Welch learning algorithm for hidden Markov models. Learning problem. Given some training observation sequences O = {o1, o2, ..., oK} and general structure of HMM (numbers of hidden and visible states), determine HMM parameters M = (A, B, pi) that best fit training data. |
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UpdateEmissions ( ) : void |
Updates the emission probability matrix. Implementations of this method should use the observations in the training data and the Gamma probability matrix to update the probability distributions of symbol emissions. |
protected BaumWelchLearningBase ( IHiddenMarkovModel model ) : System | ||
model | IHiddenMarkovModel | |
Résultat | System |
protected abstract ComputeForwardBackward ( int index, double &fwd, double &bwd, double &scaling ) : void | ||
index | int | The index of the observation in the input training data. |
fwd | double | Returns the computed forward probabilities matrix. |
bwd | double | Returns the computed backward probabilities matrix. |
scaling | double | Returns the scaling parameters used during calculations. |
Résultat | void |
protected abstract ComputeKsi ( int index, double fwd, double bwd, double scaling ) : void | ||
index | int | The index of the observation in the input training data. |
fwd | double | The matrix of forward probabilities for the observation. |
bwd | double | The matrix of backward probabilities for the observation. |
scaling | double | The scaling vector computed in previous calculations. |
Résultat | void |
protected HasConverged ( double oldLikelihood, double newLikelihood, int currentIteration ) : bool | ||
oldLikelihood | double | |
newLikelihood | double | |
currentIteration | int | |
Résultat | bool |
protected Run ( |
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observations | /// The sequences of univariate or multivariate observations used to train the model. /// Can be either of type double[] (for the univariate case) or double[][] for the /// multivariate case. /// | |
Résultat | double |
protected abstract UpdateEmissions ( ) : void | ||
Résultat | void |