Package opennlp.tools.ml.maxent
Class GISModel
java.lang.Object
opennlp.tools.ml.model.AbstractModel
opennlp.tools.ml.maxent.GISModel
- All Implemented Interfaces:
- MaxentModel
A maximum entropy model which has been trained using the Generalized
 Iterative Scaling (GIS) procedure.
- See Also:
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Nested Class SummaryNested classes/interfaces inherited from class opennlp.tools.ml.model.AbstractModelAbstractModel.ModelType
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Constructor SummaryConstructors
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Method SummaryModifier and TypeMethodDescriptionbooleanstatic double[]eval(int[] context, double[] prior, EvalParameters model) Evaluates a context and return an array of the likelihood of each outcome given the specified context and the specified parameters.double[]Evaluates a context and return an array of the likelihood of each outcome given that context.double[]Evaluates acontext.double[]Evaluates acontextwith the specified contextvalues.double[]Evaluates a context and return an array of the likelihood of each outcome given that context.inthashCode()Methods inherited from class opennlp.tools.ml.model.AbstractModelgetAllOutcomes, getBestOutcome, getDataStructures, getIndex, getModelType, getNumOutcomes, getOutcome
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Constructor Details- 
GISModelInitializes aGISModelwith the specified parameters, outcome names, and predicate/feature labels.- Parameters:
- params- The- parametersof the model.
- predLabels- The names of the predicates used in this model.
- outcomeNames- The names of the outcomes this model predicts.
 
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GISModelInitializes aGISModelwith the specified parameters, outcome names, and predicate/feature labels.- Parameters:
- params- The- parametersof the model.
- predLabels- The names of the predicates used in this model.
- outcomeNames- The names of the outcomes this model predicts.
- prior- The- Priorto be used with this model.
 
 
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Method Details- 
evalEvaluates a context and return an array of the likelihood of each outcome given that context.- Parameters:
- context- The names of the predicates which have been observed at the present decision point.
- Returns:
- The normalized probabilities for the outcomes given the context.
         The indexes of the double[] are the outcome ids, and the actual
         string representation of the outcomes can be obtained from the
         method AbstractModel.getOutcome(int).
 
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evalEvaluates acontextwith the specified contextvalues.- Parameters:
- context- An array of String names of the contextual predicates which are to be evaluated together.
- values- The values associated with each context.
- Returns:
- An array of the probabilities for each of the different
         outcomes, all of which sum to 1.
 
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evalEvaluates acontext.- Parameters:
- context- An array of String names of the contextual predicates which are to be evaluated together.
- outsums- An array which is populated with the probabilities for each of the different outcomes, all of which sum to 1.
- Returns:
- An array of the probabilities for each of the different
         outcomes, all of which sum to 1.
 
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evalEvaluates a context and return an array of the likelihood of each outcome given that context.- Parameters:
- context- The names of the predicates which have been observed at the present decision point.
- outsums- This is where the distribution is stored.
- Returns:
- The normalized probabilities for the outcomes given the context.
         The indexes of the double[] are the outcome ids, and the actual
         string representation of the outcomes can be obtained from the
         method AbstractModel.getOutcome(int).
 
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evalEvaluates a context and return an array of the likelihood of each outcome given the specified context and the specified parameters.- Parameters:
- context- The integer values of the predicates which have been observed at the present decision point.
- prior- The prior distribution for the specified context.
- model- The set of parameters used in this computation.
- Returns:
- The normalized probabilities for the outcomes given the context.
         The indexes of the double[] are the outcome ids, and the actual
         string representation of the outcomes can be obtained from the
         method AbstractModel.getOutcome(int).
 
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hashCodepublic int hashCode()- Overrides:
- hashCodein class- AbstractModel
 
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equals- Overrides:
- equalsin class- AbstractModel
 
 
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