| Class | Description | 
|---|---|
| Association | 
 Calculates the strength between pairs of variables or sets of variables. 
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| AssociationOptions | 
 Options that affect the link strength algorithm. 
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| AssociationOutput | 
 Contains the results of an Association analysis. 
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| AssociationPair | 
 Defines two sets of variables to be analyzed by the Association algorithm. 
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| AssociationPairOutput | 
 Contains the results of the association calculations between two sets of variables. 
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| AutoInsight | 
 Uses comparison queries to automatically derive insight about a target variable from a trained network. 
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| AutoInsightOptions | 
 Options that affect auto-insight calculations. 
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| AutoInsightOutput | 
 Contains the results obtained from  
AutoInsight. | 
| AutoInsightSamplingOptions | 
 Options that affect any sampling required during auto-insight calculations. 
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| AutoInsightStateOutput | 
 Contains the results obtained from  
AutoInsight for each test variable. | 
| AutoInsightStateOutputCollection | 
 Represents a collection of  
AutoInsightStateOutput instances. | 
| AutoInsightVariableOutput | 
 Represents the output obtained from  
AutoInsight for a test variable. | 
| AutoInsightVariableOutputCollection | 
 Represents a collection of  
AutoInsightVariableOutput instances. | 
| ClusterCount | 
 Methods to determine the number of clusters (discrete states of a latent variable). 
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| ClusterCountOptions | 
 Options used by  
ClusterCount. | 
| ClusterCountOutput | 
 Output information returned from  
ClusterCount. | 
| ClusterScore | 
 Contains the results of a cluster configuration returned from  
ClusterCount. | 
| CombinationOptions | 
 Determines which combinations are generated by  
Combinations. | 
| Combinations | 
 Generates the available state combinations for a set of variables or counts. 
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| ConfusionMatrix | 
 Calculates a confusion matrix for a network which is used to predict discrete values (classification). 
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| ConfusionMatrixCell | 
 Contains statistics about a cell in a  
ConfusionMatrix. | 
| Correlation | 
 Methods to convert covariance matrices to correlation matrices. 
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| DSeparation | 
 Contains methods to calculate D-Separation. 
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| DSeparationOptions | 
 Options for calculating D-Separation. 
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| DSeparationOutput | 
 Contains the results of a test for D-Separation. 
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| DSeparationTestResult | 
 The result of a D-Separation check for a test node. 
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| DSeparationTestResultCollection | 
 Collection of D-Separation test results. 
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| HistogramDensity | 
 Represents an empirical density function built from a histogram, which can represent arbitrary univariate distributions. 
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| HistogramDensityOptions | 
 Options for learning a histogram based empirical density. 
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| Impact | 
 Analyzes the impact of evidence. 
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| ImpactHypothesisOutput | 
 Output information about the hypothesis variable/state from an Impact analysis. 
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| ImpactOptions | 
 Options affecting how Impact analysis calculations are performed. 
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| ImpactOutput | 
 Contains the results of an Impact analysis. 
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| ImpactOutputItem | 
 The output from an impact analysis, for a particular subset of evidence. 
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| InSampleAnomalyDetection | 
 Detects in-sample anomalies in a data set. 
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| InSampleAnomalyDetectionOptions | 
 Options used by  
InSampleAnomalyDetection. | 
| InSampleAnomalyDetectionOutput | 
 Output used by  
InSampleAnomalyDetection. | 
| LiftChart | 
 Represents a lift chart, used to measure predictive performance. 
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| LiftChartPoint | 
 Represents an XY coordinate in a lift chart. 
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| LogLikelihoodAnalysis | 
 Analyzes the log-likelihood for different evidence subsets. 
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| LogLikelihoodAnalysisBaselineOutput | 
 Output information about the log-likelihood from a log-likelihood analysis. 
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| LogLikelihoodAnalysisOptions | 
 Options affecting how Log-Likelihood analysis calculations are performed. 
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| LogLikelihoodAnalysisOutput | 
 Contains the results of a Log-Likelihood analysis. 
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| LogLikelihoodAnalysisOutputItem | 
 The output from a Log-Likelihood analysis, for a particular subset of evidence. 
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| ParameterReference | 
 References a parameter in a node distribution. 
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| ParameterTuning | 
 Calculates how a parameter can be updated so that the resulting value of a hypothesis is within a given range. 
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| ParameterTuningOneWay | 
 Represents the result of one way parameter tuning. 
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| RegressionStatistics | 
 Calculates statistics for a network which is used to predict continuous values (regression). 
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| SensitivityFunctionOneWay | 
 Represents the result on a one-way sensitivity to parameters analysis. 
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| SensitivityFunctionTwoWay | 
 Represents the result on a two-way sensitivity to parameters analysis. 
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| SensitivityToParameters | 
 Calculates the affect of one or more parameters on the value of a hypothesis. 
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| ValueOfInformation | 
 Contains methods to determine what new evidence is most likely to reduce the uncertainty of a variable. 
 | 
| ValueOfInformationOptions | 
 Options for calculating  
ValueOfInformation. | 
| ValueOfInformationOutput | 
 Contains the results of the tests carried out using  
ValueOfInformation. | 
| ValueOfInformationTestOutput | 
 Contains information about a variable tested via  
ValueOfInformation. | 
| Enum | Description | 
|---|---|
| AutoInsightJSDivergence | 
 Determines the type of Jensen Shannon divergence calculations, if any, performed during an auto insight analysis. 
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| AutoInsightKLDivergence | 
 Determines the type of KL divergence calculations, if any, performed during an auto insight analysis. 
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| DSeparationCategory | 
 The result of a D-Separation test. 
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| ImpactSubsetMethod | 
 Determines how subsets are determined during impact analysis. 
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| LogLikelihoodAnalysisSubsetMethod | 
 Determines how subsets are determined during a Log-Likelihood analysis. 
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| ValueOfInformationKind | 
 The type of value of information statistic calculated. 
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| Exception | Description | 
|---|---|
| ConstraintNotSatisfiedException | 
 Exception raised when parameter tuning attempts to solve for a constraint that cannot be satisfied by the change(s) in parameters. 
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| ConstraintSatisfiedException | 
 Exception raised when parameter tuning attempts to solve for a constraint that is already true. 
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