blob: 0e936d763228227f74fc149adac94f32b85a6fac [file] [log] [blame]
package org.apache.samoa.learners.classifiers.ensemble;
import java.util.Arrays;
import java.util.Random;
/*
* #%L
* SAMOA
* %%
* Copyright (C) 2014 - 2015 Apache Software Foundation
* %%
* Licensed under the Apache License, Version 2.0 (the "License");
* you may not use this file except in compliance with the License.
* You may obtain a copy of the License at
*
* http://www.apache.org/licenses/LICENSE-2.0
*
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an "AS IS" BASIS,
* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* See the License for the specific language governing permissions and
* limitations under the License.
* #L%
*/
/**
* License
*/
import org.apache.samoa.core.ContentEvent;
import org.apache.samoa.core.Processor;
import org.apache.samoa.instances.Instance;
import org.apache.samoa.learners.InstanceContentEvent;
import org.apache.samoa.topology.Stream;
/**
* The Class BaggingDistributorPE.
*/
public class ShardingDistributorProcessor implements Processor {
private static final long serialVersionUID = -1550901409625192730L;
/** The ensemble size. */
private int ensembleSize;
/** The stream ensemble. */
private Stream[] ensembleStreams;
/** Ramdom number generator. */
protected Random random = new Random(); //TODO make random seed configurable
/**
* On event.
*
* @param event
* the event
* @return true, if successful
*/
public boolean process(ContentEvent event) {
InstanceContentEvent inEvent = (InstanceContentEvent) event;
if (inEvent.isLastEvent()) {
// end learning
for (Stream stream : ensembleStreams)
stream.put(event);
return false;
}
if (inEvent.isTesting()) {
Instance testInstance = inEvent.getInstance();
for (int i = 0; i < ensembleSize; i++) {
Instance instanceCopy = testInstance.copy();
InstanceContentEvent instanceContentEvent = new InstanceContentEvent(inEvent.getInstanceIndex(), instanceCopy,
false, true);
instanceContentEvent.setClassifierIndex(i); //TODO probably not needed anymore
instanceContentEvent.setEvaluationIndex(inEvent.getEvaluationIndex()); //TODO probably not needed anymore
ensembleStreams[i].put(instanceContentEvent);
}
}
// estimate model parameters using the training data
if (inEvent.isTraining()) {
train(inEvent);
}
return false;
}
/**
* Train.
*
* @param inEvent
* the in event
*/
protected void train(InstanceContentEvent inEvent) {
Instance trainInst = inEvent.getInstance().copy();
InstanceContentEvent instanceContentEvent = new InstanceContentEvent(inEvent.getInstanceIndex(), trainInst,
true, false);
int i = random.nextInt(ensembleSize);
instanceContentEvent.setClassifierIndex(i);
instanceContentEvent.setEvaluationIndex(inEvent.getEvaluationIndex());
ensembleStreams[i].put(instanceContentEvent);
}
/*
* (non-Javadoc)
*
* @see org.apache.s4.core.ProcessingElement#onCreate()
*/
@Override
public void onCreate(int id) {
// do nothing
}
public Stream[] getOutputStreams() {
return ensembleStreams;
}
public void setOutputStreams(Stream[] ensembleStreams) {
this.ensembleStreams = ensembleStreams;
}
/**
* Gets the size ensemble.
*
* @return the size ensemble
*/
public int getEnsembleSize() {
return ensembleSize;
}
/**
* Sets the size ensemble.
*
* @param ensembleSize
* the new size ensemble
*/
public void setEnsembleSize(int ensembleSize) {
this.ensembleSize = ensembleSize;
}
/*
* (non-Javadoc)
*
* @see samoa.core.Processor#newProcessor(samoa.core.Processor)
*/
@Override
public Processor newProcessor(Processor sourceProcessor) {
ShardingDistributorProcessor newProcessor = new ShardingDistributorProcessor();
ShardingDistributorProcessor originProcessor = (ShardingDistributorProcessor) sourceProcessor;
if (originProcessor.getOutputStreams() != null) {
newProcessor.setOutputStreams(Arrays.copyOf(originProcessor.getOutputStreams(),
originProcessor.getOutputStreams().length));
}
newProcessor.setEnsembleSize(originProcessor.getEnsembleSize());
/*
* if (originProcessor.getLearningCurve() != null){
* newProcessor.setLearningCurve((LearningCurve)
* originProcessor.getLearningCurve().copy()); }
*/
return newProcessor;
}
}