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| Packages that use TrainingSample | |
|---|---|
| fr.lip6.classifier | |
| fr.lip6.kernel | Package containing generic kernels on vectors. |
| fr.lip6.kernel.adaptative | |
| Uses of TrainingSample in fr.lip6.classifier |
|---|
| Methods in fr.lip6.classifier that return types with arguments of type TrainingSample | |
|---|---|
java.util.ArrayList<TrainingSample<T>> |
SMOSVM.getTrainingSet()
the ArrayList of TrainingSample used for training |
| Methods in fr.lip6.classifier with parameters of type TrainingSample | |
|---|---|
void |
DoublePegasosSVM.train(TrainingSample<double[]> t)
|
void |
SMOSVM.train(TrainingSample<T> t)
|
void |
EnhancedSMOSVM.train(TrainingSample<T> t)
|
void |
SimpleMKL.train(TrainingSample<T> train)
|
void |
PegasosSVM.train(TrainingSample<T> t)
|
void |
ParzenClassifier.train(TrainingSample<T> t)
|
void |
Classifier.train(TrainingSample<T> t)
Add a single example to the current training set and train the classifier |
| Method parameters in fr.lip6.classifier with type arguments of type TrainingSample | |
|---|---|
void |
SMOSVM.setTrain(java.util.ArrayList<TrainingSample<T>> t)
|
void |
DoublePegasosSVM.train(java.util.ArrayList<TrainingSample<double[]>> l)
|
void |
SMOSVM.train(java.util.ArrayList<TrainingSample<T>> t)
|
void |
EnhancedSMOSVM.train(java.util.ArrayList<TrainingSample<T>> t)
|
void |
SimpleMKL.train(java.util.ArrayList<TrainingSample<T>> list)
optimisation des poids d'après l'algorithme SimpleMKL d'Alain Rakotomamonjy |
void |
PegasosSVM.train(java.util.ArrayList<TrainingSample<T>> l)
|
void |
ParzenClassifier.train(java.util.ArrayList<TrainingSample<T>> t)
|
void |
Classifier.train(java.util.ArrayList<TrainingSample<T>> l)
Replace the current training and train the classifier |
| Uses of TrainingSample in fr.lip6.kernel |
|---|
| Method parameters in fr.lip6.kernel with type arguments of type TrainingSample | |
|---|---|
double[][] |
CMKernel.getKernelMatrix(java.util.ArrayList<TrainingSample<T>> e)
|
double[][] |
ThreadedKernel.getKernelMatrix(java.util.ArrayList<TrainingSample<T>> e)
|
double[][] |
Kernel.getKernelMatrix(java.util.ArrayList<TrainingSample<T>> e)
return the Gram Matrix of this kernel computed on given samples |
double[][] |
Kernel.getNormalizedKernelMatrix(java.util.ArrayList<TrainingSample<T>> e)
return the Gram Matrix of this kernel computed on given samples |
| Uses of TrainingSample in fr.lip6.kernel.adaptative |
|---|
| Method parameters in fr.lip6.kernel.adaptative with type arguments of type TrainingSample | |
|---|---|
double[][] |
WeightedSumKernel.getKernelMatrix(java.util.ArrayList<TrainingSample<T>> e)
|
double[][] |
ThreadedSumKernel.getKernelMatrix(java.util.ArrayList<TrainingSample<T>> e)
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