| Interface | Description |
|---|---|
| IEvaluation<T extends IEvaluation> |
A general purpose interface for evaluating neural networks - methods are shared by implemetations such as
Evaluation, RegressionEvaluation, ROC, ROCMultiClass |
| Class | Description |
|---|---|
| BaseEvaluation<T extends BaseEvaluation> |
BaseEvaluation implement common evaluation functionality (for time series, etc) for
Evaluation,
RegressionEvaluation, ROC, ROCMultiClass etc. |
| ConfusionMatrix<T extends Comparable<? super T>> | |
| Evaluation |
Evaluation metrics:
precision, recall, f1
|
| EvaluationUtils |
Utility methods for performing evaluation
|
| RegressionEvaluation |
Evaluation method for the evaluation of regression algorithms.
Provides the following metrics, for each column: - MSE: mean squared error - MAE: mean absolute error - RMSE: root mean squared error - RSE: relative squared error - correlation coefficient See for example: http://www.saedsayad.com/model_evaluation_r.htm For classification, see Evaluation |
| ROC |
ROC (Receiver Operating Characteristic) for binary classifiers, using the specified number of threshold steps.
|
| ROC.CountsForThreshold | |
| ROC.PrecisionRecallPoint | |
| ROC.ROCValue | |
| ROCMultiClass |
ROC (Receiver Operating Characteristic) for multi-class classifiers, using the specified number of threshold steps.
|
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