| Accuracy | Computes the Accuracy measure. |
| BinaryPlot | Plotting feature clusters following bi-class problem. |
| ChiSquareHeuristic | Feature-clustering based on ChiSquare method. |
| ClassificationOutput | D2MCS Classification Output. |
| ClassMajorityVoting | Implementation of Majority Voting voting. |
| ClassWeightedVoting | Implementation Weighted Voting scheme. |
| ClusterPredictions | Manages the predictions achieved on a cluster. |
| CombinedMetrics | Abstract class to compute the class prediction based on combination between metrics. |
| CombinedVoting | Implementation of Combined Voting. |
| ConfMatrix | Confusion matrix wrapper. |
| D2MCS | Data Driven Multiple Classifier System. |
| Dataset | Simple Dataset handler. |
| DatasetLoader | Dataset creation. |
| DefaultModelFit | Default model fitting implementation. |
| DependencyBasedStrategy | Clustering strategy based on dependency between features. |
| DependencyBasedStrategyConfiguration | Custom Strategy Configuration handler for the DependencyBasedStrategy strategy. |
| FisherTestHeuristic | Feature-clustering based on Fisher's Exact Test. |
| FN | Computes the False Negative errors. |
| FP | Computes the False Positive value. |
| GainRatioHeuristic | Feature-clustering based on GainRatio methodology. |
| GenericClusteringStrategy | Abstract Feature Clustering Strategy class. |
| GenericHeuristic | Abstract Feature Clustering heuristic object. |
| GenericModelFit | Abstract class for defining model fitting method. |
| GenericPlot | Pseudo-abstract class for creating feature clustering plots. |
| HDDataset | High Dimensional Dataset handler. |
| HDSubset | High Dimensional Subset handler. |
| InformationGainHeuristic | Feature-clustering based on InformationGain methodology. |
| Kappa | Computes the Kappa Cohen value. |
| KendallHeuristic | Feature-clustering based on Kendall Correlation Test. |
| MCC | Computes the Matthews correlation coefficient. |
| MCCHeuristic | Feature-clustering based on Matthews Correlation Coefficient score. |
| MeasureFunction | Archetype to define customized measures. |
| Methodology | Abstract class to compute the probability prediction based on combination between metrics. |
| MinimizeFN | Combined metric strategy to minimize FN errors. |
| MinimizeFP | Combined metric strategy to minimize FP errors. |
| MultinformationHeuristic | Feature-clustering based on Mutual Information Computation theory. |
| NoProbability | Compute performance across resamples. |
| NPV | Computes the Negative Predictive Value. |
| OddsRatioHeuristic | Feature-clustering based on Odds Ratio measure. |
| PearsonHeuristic | Feature-clustering based on Pearson Correlation Test. |
| PPV | Computes the Positive Predictive Value. |
| Precision | Computes the Precision Value. |
| PredictionOutput | Encapsulates the achieved predictions. |
| ProbAverageVoting | Implementation of Probabilistic Average voting. |
| ProbAverageWeightedVoting | Implementation of Probabilistic Average Weighted voting. |
| ProbBasedMethodology | Methodology to obtain the combination of the probability of different metrics. |
| Recall | Computes the Recall Value. |
| Sensitivity | Computes the Sensitivity Value. |
| SimpleStrategy | Simple feature clustering strategy. |
| SimpleVoting | Abtract class to define simple voting schemes. |
| SingleVoting | Manages the execution of Simple Votings. |
| SpearmanHeuristic | Feature-clustering based on Spearman Correlation Test. |
| Specificity | Computes the Specificity Value. |
| StrategyConfiguration | Default Strategy Configuration handler. |
| Subset | Classification set. |
| SummaryFunction | Abstract class to computing performance across resamples. |
| TN | Computes the True Negative value. |
| TP | Computes the True Positive Value. |
| TrainFunction | Control parameters for train stage. |
| TrainOutput | Stores the results achieved during training. |
| Trainset | Trainning set. |
| TwoClass | Control parameters for train stage (Bi-class problem). |
| TypeBasedStrategy | Feature clustering strategy. |
| UseProbability | Compute performance across resamples. |
| VotingStrategy | Voting Strategy template. |