net.jkernelmachines.classifier.transductive.TransductiveClassifier Maven / Gradle / Ivy
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package net.jkernelmachines.classifier.transductive;
import java.util.List;
import net.jkernelmachines.type.TrainingSample;
/**
* Interface for transductive classifiers.
* @author dpicard
*
* @param Datatype of input space
*/
public interface TransductiveClassifier {
/**
* Train the classifier on trainList, with the help of testList in a transductive way.
* @param trainList train list
* @param testList test list
*/
public void train(List> trainList, List> testList);
/**
* prediction output for t.
* @param t sample to evaluate
* @return the output value for this sample
*/
public double valueOf(T t);
}