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| Packages that use Kernel | |
|---|---|
| weka.classifiers.functions | |
| weka.classifiers.functions.supportVector | |
| weka.filters.unsupervised.attribute | |
| Uses of Kernel in weka.classifiers.functions |
|---|
| Methods in weka.classifiers.functions that return Kernel | |
|---|---|
Kernel |
GaussianProcesses.getKernel()
Gets the kernel to use. |
Kernel |
SMOreg.getKernel()
Returns the kernel to use |
Kernel |
SMO.getKernel()
Returns the kernel to use |
Kernel |
SMO.BinarySMO.getKernel()
Returns the kernel to use |
| Methods in weka.classifiers.functions with parameters of type Kernel | |
|---|---|
void |
GaussianProcesses.setKernel(Kernel value)
Sets the kernel to use. |
void |
SMOreg.setKernel(Kernel value)
sets the kernel to use |
void |
SMO.setKernel(Kernel value)
sets the kernel to use |
void |
SMO.BinarySMO.setKernel(Kernel value)
sets the kernel to use |
| Uses of Kernel in weka.classifiers.functions.supportVector |
|---|
| Subclasses of Kernel in weka.classifiers.functions.supportVector | |
|---|---|
class |
CachedKernel
Base class for RBFKernel and PolyKernel that implements a simple LRU. |
class |
NormalizedPolyKernel
The normalized polynomial kernel. K(x,y) = <x,y>/sqrt(<x,x><y,y>) where <x,y> = PolyKernel(x,y) Valid options are: |
class |
PolyKernel
The polynomial kernel : K(x, y) = <x, y>^p or K(x, y) = (<x, y>+1)^p Valid options are: |
class |
PrecomputedKernelMatrixKernel
This kernel is based on a static kernel matrix that is read from a file. |
class |
Puk
The Pearson VII function-based universal kernel. For more information see: B. |
class |
RBFKernel
The RBF kernel. |
class |
StringKernel
Implementation of the subsequence kernel (SSK) as described in [1] and of the subsequence kernel with lambda pruning (SSK-LP) as described in [2]. For more information, see Huma Lodhi, Craig Saunders, John Shawe-Taylor, Nello Cristianini, Christopher J. |
| Methods in weka.classifiers.functions.supportVector that return Kernel | |
|---|---|
static Kernel |
Kernel.forName(String kernelName,
String[] options)
Creates a new instance of a kernel given it's class name and (optional) arguments to pass to it's setOptions method. |
Kernel |
CheckKernel.getKernel()
Get the kernel being tested |
static Kernel[] |
Kernel.makeCopies(Kernel model,
int num)
Creates a given number of deep copies of the given kernel using serialization. |
static Kernel |
Kernel.makeCopy(Kernel kernel)
Creates a deep copy of the given kernel using serialization. |
| Methods in weka.classifiers.functions.supportVector with parameters of type Kernel | |
|---|---|
String |
KernelEvaluation.evaluate(Kernel kernel,
Instances data)
Evaluates the Kernel with the given commandline options and returns the evaluation string. |
static String |
KernelEvaluation.evaluate(Kernel Kernel,
String[] options)
Evaluates the Kernel with the given commandline options and returns the evaluation string. |
static Kernel[] |
Kernel.makeCopies(Kernel model,
int num)
Creates a given number of deep copies of the given kernel using serialization. |
static Kernel |
Kernel.makeCopy(Kernel kernel)
Creates a deep copy of the given kernel using serialization. |
void |
CheckKernel.setKernel(Kernel value)
Set the lernel to test. |
| Uses of Kernel in weka.filters.unsupervised.attribute |
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| Methods in weka.filters.unsupervised.attribute that return Kernel | |
|---|---|
Kernel |
KernelFilter.getKernel()
Gets the kernel to use. |
| Methods in weka.filters.unsupervised.attribute with parameters of type Kernel | |
|---|---|
void |
KernelFilter.setKernel(Kernel value)
Sets the kernel to use. |
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