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| Packages that use be.ac.ulg.montefiore.run.jahmm | |
|---|---|
| be.ac.ulg.montefiore.run.jahmm | This package is an Hidden Markov Model implementation. |
| be.ac.ulg.montefiore.run.jahmm.io | This package holds classes that read and write Hidden Markov Model-related objects. |
| be.ac.ulg.montefiore.run.jahmm.learn | This package holds Hidden Markov Model-related learning algorithms. |
| be.ac.ulg.montefiore.run.jahmm.toolbox | This package holds Hidden Markov Model-related tool algorithms. |
| Classes in be.ac.ulg.montefiore.run.jahmm used by be.ac.ulg.montefiore.run.jahmm | |
|---|---|
| Centroid
The centroid (basically, the mean) of a cluster. |
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| CentroidFactory
Creates a centroid for type |
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| ForwardBackwardCalculator
This class can be used to compute the probability of a given observations sequence for a given HMM. |
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| ForwardBackwardCalculator.Computation
Flags used to explain how the observation sequence probability should be computed (either forward, using the alpha array, or backward, using the beta array). |
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| Hmm
Main Hmm class; it implements an Hidden Markov Model. |
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| Observation
Observations generated by a Markovian process. |
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| ObservationDiscrete
This class implements observations whose values are taken out of a finite set implemented as an enumeration. |
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| ObservationInteger
This class holds an integer observation. |
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| ObservationReal
This class implements observations made of a real value. |
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| ObservationVector
This class holds an Observation described by a vector of reals. |
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| Opdf
Objects implementing this interface represent an observation probability (distribution) function. |
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| OpdfDiscrete
This class implements a distribution over a finite set of elements. |
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| OpdfFactory
Classes implementing this interface are able to generate observation probability distribution functions. |
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| OpdfGaussian
This class represents a (monovariate) gaussian distribution function. |
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| OpdfGaussianMixture
This class implements a mixture of monovariate gaussian distributions. |
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| OpdfInteger
This class represents a distribution of a finite number of positive integer observations. |
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| OpdfMultiGaussian
This class represents a multivariate gaussian distribution function. |
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| Classes in be.ac.ulg.montefiore.run.jahmm used by be.ac.ulg.montefiore.run.jahmm.io | |
|---|---|
| Hmm
Main Hmm class; it implements an Hidden Markov Model. |
|
| Observation
Observations generated by a Markovian process. |
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| ObservationInteger
This class holds an integer observation. |
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| ObservationReal
This class implements observations made of a real value. |
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| ObservationVector
This class holds an Observation described by a vector of reals. |
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| Opdf
Objects implementing this interface represent an observation probability (distribution) function. |
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| OpdfGaussian
This class represents a (monovariate) gaussian distribution function. |
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| OpdfGaussianMixture
This class implements a mixture of monovariate gaussian distributions. |
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| OpdfInteger
This class represents a distribution of a finite number of positive integer observations. |
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| OpdfMultiGaussian
This class represents a multivariate gaussian distribution function. |
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| Classes in be.ac.ulg.montefiore.run.jahmm used by be.ac.ulg.montefiore.run.jahmm.learn | |
|---|---|
| CentroidFactory
Creates a centroid for type |
|
| ForwardBackwardCalculator
This class can be used to compute the probability of a given observations sequence for a given HMM. |
|
| Hmm
Main Hmm class; it implements an Hidden Markov Model. |
|
| Observation
Observations generated by a Markovian process. |
|
| Opdf
Objects implementing this interface represent an observation probability (distribution) function. |
|
| OpdfFactory
Classes implementing this interface are able to generate observation probability distribution functions. |
|
| Classes in be.ac.ulg.montefiore.run.jahmm used by be.ac.ulg.montefiore.run.jahmm.toolbox | |
|---|---|
| Hmm
Main Hmm class; it implements an Hidden Markov Model. |
|
| Observation
Observations generated by a Markovian process. |
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