public class GmeansSamplingFactory<I extends INumericLabeledAttributeArrayInstance<? extends java.lang.Number>,D extends IDataset<I>> extends java.lang.Object implements IRerunnableSamplingAlgorithmFactory<D,GmeansSampling<I,D>>
| Constructor and Description |
|---|
GmeansSamplingFactory() |
| Modifier and Type | Method and Description |
|---|---|
GmeansSampling<I,D> |
getAlgorithm(int sampleSize,
D inputDataset,
java.util.Random random)
After the necessary config is done, this method returns a fully configured
instance of a sampling algorithm.
|
void |
setClusterSeed(long clusterSeed)
Set the seed the clustering will use for initialization.
|
void |
setDistanceMeassure(org.apache.commons.math3.ml.distance.DistanceMeasure distanceMeassure)
Set the distance measure for the clustering.
|
void |
setPreviousRun(GmeansSampling<I,D> previousRun)
Set the previous run of the sampling algorithm, if one occurred, can be set
here to get data from it.
|
public void setPreviousRun(GmeansSampling<I,D> previousRun)
IRerunnableSamplingAlgorithmFactorysetPreviousRun in interface IRerunnableSamplingAlgorithmFactory<D extends IDataset<I>,GmeansSampling<I extends INumericLabeledAttributeArrayInstance<? extends java.lang.Number>,D extends IDataset<I>>>previousRun - Algorithm object of the previous of the sampling
algorithm.public void setClusterSeed(long clusterSeed)
clusterSeed - public void setDistanceMeassure(org.apache.commons.math3.ml.distance.DistanceMeasure distanceMeassure)
distanceMeassure - public GmeansSampling<I,D> getAlgorithm(int sampleSize, D inputDataset, java.util.Random random)
ISamplingAlgorithmFactorygetAlgorithm in interface ISamplingAlgorithmFactory<D extends IDataset<I>,GmeansSampling<I extends INumericLabeledAttributeArrayInstance<? extends java.lang.Number>,D extends IDataset<I>>>sampleSize - Desired size of the sample that will be created.inputDataset - Dataset where the sample will be drawn from.random - Random object to make samples reproducible.