OneVsOneLearningTInput, TBinary, TModel Class |
Namespace: Accord.MachineLearning
[SerializableAttribute] public abstract class OneVsOneLearning<TInput, TBinary, TModel> : ParallelLearningBase, ISupervisedLearning<TModel, TInput, int> where TBinary : class, Object, IBinaryClassifier<TInput>, ICloneable where TModel : OneVsOne<TBinary, TInput>
The OneVsOneLearningTInput, TBinary, TModel type exposes the following members.
Name | Description | |
---|---|---|
OneVsOneLearningTInput, TBinary, TModel | Initializes a new instance of the OneVsOneLearningTInput, TBinary, TModel class |
Name | Description | |
---|---|---|
AggregateExceptions |
Gets or sets a value indicating whether the entire training algorithm should stop
in case an exception has been detected at just one of the inner binary learning
problems. Default is true (execution will not be stopped).
| |
Learner |
Gets or sets a function that takes a set of parameters and creates
a learning algorithm for learning each of the binary inner classifiers
needed by the one-vs-one classification strategy.
| |
Model |
Gets or sets the model being learned.
| |
ParallelOptions |
Gets or sets the parallelization options for this algorithm.
(Inherited from ParallelLearningBase.) | |
Token |
Gets or sets a cancellation token that can be used
to cancel the algorithm while it is running.
(Inherited from ParallelLearningBase.) |
Name | Description | |
---|---|---|
ConfigureTResult(FuncTResult) |
Sets a callback function that takes a set of parameters and creates
a learning algorithm for learning each of the binary inner classifiers
needed by the one-vs-rest classification strategy. Calling this method
sets the Learner property.
| |
ConfigureT, TResult(FuncT, TResult) |
Sets a callback function that takes a set of parameters and creates
a learning algorithm for learning each of the binary inner classifiers
needed by the one-vs-rest classification strategy. Calling this method
sets the Learner property.
| |
Create |
Creates an instance of the model to be learned. Inheritors
of this abstract class must define this method so new models
can be created from the training data.
| |
Equals | Determines whether the specified object is equal to the current object. (Inherited from Object.) | |
Finalize | Allows an object to try to free resources and perform other cleanup operations before it is reclaimed by garbage collection. (Inherited from Object.) | |
GetHashCode | Serves as the default hash function. (Inherited from Object.) | |
GetType | Gets the Type of the current instance. (Inherited from Object.) | |
Learn |
Learns a model that can map the given inputs to the given outputs.
| |
MemberwiseClone | Creates a shallow copy of the current Object. (Inherited from Object.) | |
OnSubproblemFinished |
Raises the [E:SubproblemFinished] event.
| |
OnSubproblemStarted |
Raises the [E:SubproblemStarted] event.
| |
ToString | Returns a string that represents the current object. (Inherited from Object.) |
Name | Description | |
---|---|---|
SubproblemFinished |
Occurs when the learning of a subproblem has finished.
| |
SubproblemStarted |
Occurs when the learning of a subproblem has started.
|
Name | Description | |
---|---|---|
HasMethod |
Checks whether an object implements a method with the given name.
(Defined by ExtensionMethods.) | |
IsEqual |
Compares two objects for equality, performing an elementwise
comparison if the elements are vectors or matrices.
(Defined by Matrix.) | |
To(Type) | Overloaded.
Converts an object into another type, irrespective of whether
the conversion can be done at compile time or not. This can be
used to convert generic types to numeric types during runtime.
(Defined by ExtensionMethods.) | |
ToT | Overloaded.
Converts an object into another type, irrespective of whether
the conversion can be done at compile time or not. This can be
used to convert generic types to numeric types during runtime.
(Defined by ExtensionMethods.) |