Uses of Interface
org.nd4j.linalg.learning.regularization.Regularization
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Packages that use Regularization Package Description org.nd4j.autodiff.samediff org.nd4j.linalg.learning.regularization -
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Uses of Regularization in org.nd4j.autodiff.samediff
Methods in org.nd4j.autodiff.samediff with parameters of type Regularization Modifier and Type Method Description TrainingConfig.BuilderTrainingConfig.Builder. addRegularization(Regularization... regularizations)Add regularization to all trainable parameters in the networkTrainingConfig.BuilderTrainingConfig.Builder. regularization(Regularization... regularization)Set the regularization for all trainable parameters in the network.Method parameters in org.nd4j.autodiff.samediff with type arguments of type Regularization Modifier and Type Method Description TrainingConfig.BuilderTrainingConfig.Builder. regularization(List<Regularization> regularization)Set the regularization for all trainable parameters in the network.Constructor parameters in org.nd4j.autodiff.samediff with type arguments of type Regularization Constructor Description TrainingConfig(IUpdater updater, List<Regularization> regularization, boolean minimize, List<String> dataSetFeatureMapping, List<String> dataSetLabelMapping, List<String> dataSetFeatureMaskMapping, List<String> dataSetLabelMaskMapping, List<String> lossVariables, Map<String,List<IEvaluation>> trainEvaluations, Map<String,Integer> trainEvaluationLabels, Map<String,List<IEvaluation>> validationEvaluations, Map<String,Integer> validationEvaluationLabels, DataType initialLossDataType)TrainingConfig(IUpdater updater, List<Regularization> regularization, boolean minimize, List<String> dataSetFeatureMapping, List<String> dataSetLabelMapping, List<String> dataSetFeatureMaskMapping, List<String> dataSetLabelMaskMapping, List<String> lossVariables, DataType initialLossDataType)Create a training configuration suitable for training both single input/output and multi input/output networks.
See also theTrainingConfig.Builderfor creating a TrainingConfigTrainingConfig(IUpdater updater, List<Regularization> regularization, String dataSetFeatureMapping, String dataSetLabelMapping)Create a training configuration suitable for training a single input, single output network.
See also theTrainingConfig.Builderfor creating a TrainingConfig -
Uses of Regularization in org.nd4j.linalg.learning.regularization
Classes in org.nd4j.linalg.learning.regularization that implement Regularization Modifier and Type Class Description classL1RegularizationclassL2RegularizationclassWeightDecayMethods in org.nd4j.linalg.learning.regularization that return Regularization Modifier and Type Method Description RegularizationL1Regularization. clone()RegularizationL2Regularization. clone()RegularizationRegularization. clone()RegularizationWeightDecay. clone()
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