메소드 | 설명 | |
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IsValidResume ( TrainingContinuation state ) : bool |
Determine if the specified continuation object is valid to resume with.
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Pause ( ) : TrainingContinuation |
Pause the training.
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ResilientPropagation ( IContainsFlat network, IMLDataSet training ) : System |
Construct an RPROP trainer, allows an OpenCL device to be specified. Use the defaults for all training parameters. Usually this is the constructor to use as the resilient training algorithm is designed for the default parameters to be acceptable for nearly all problems.
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ResilientPropagation ( IContainsFlat network, IMLDataSet training, double initialUpdate, double maxStep ) : System |
Construct a resilient training object, allow the training parameters to be specified. Usually the default parameters are acceptable for the resilient training algorithm. Therefore you should usually use the other constructor, that makes use of the default values.
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Resume ( TrainingContinuation state ) : void |
Resume training.
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public IsValidResume ( TrainingContinuation state ) : bool | ||
state | TrainingContinuation | The continuation object to check. |
리턴 | bool |
public ResilientPropagation ( IContainsFlat network, IMLDataSet training ) : System | ||
network | IContainsFlat | The network to train. |
training | IMLDataSet | The training data to use. |
리턴 | System |
public ResilientPropagation ( IContainsFlat network, IMLDataSet training, double initialUpdate, double maxStep ) : System | ||
network | IContainsFlat | The network to train. |
training | IMLDataSet | The training set to use. |
initialUpdate | double | |
maxStep | double | The maximum that a delta can reach. |
리턴 | System |
public final Resume ( TrainingContinuation state ) : void | ||
state | TrainingContinuation | The training state to return to. |
리턴 | void |