Developer/Weka
[Weka] Tutorial 소스
데브포유
2011. 11. 30. 09:53
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아래 소스는 연령과 성별에 따라 특정 사이트에 로그인한 횟수를 기반으로
특정 성별과 연령을 입력 했을 때 그 사람이 로그인할 횟수를 예측하는 소스입니다.
Weka를 이용하면 다양한 분야에 적용할 수 있을 듯 합니다.
[소스]
package com.alag.ci.weka.tutorial;
특정 성별과 연령을 입력 했을 때 그 사람이 로그인할 횟수를 예측하는 소스입니다.
Weka를 이용하면 다양한 분야에 적용할 수 있을 듯 합니다.
[소스]
package com.alag.ci.weka.tutorial;
import weka.classifiers.Classifier;
import weka.classifiers.Evaluation;
import weka.classifiers.functions.RBFNetwork;
import weka.core.Attribute;
import weka.core.FastVector;
import weka.core.Instance;
import weka.core.Instances;
public class WEKATutorial {
public static void main(String [] args) throws Exception {
WEKATutorial wekaTut = new WEKATutorial();
wekaTut.executeWekaTutorial();
}
private void executeWekaTutorial() throws Exception {
FastVector allAttributes = createAttributes();
Instances learningDataset = createLearningDataSet(allAttributes);
Classifier predictiveModel = learnPredictiveModel( learningDataset);
Evaluation evaluation = evaluatePredictiveModel(predictiveModel, learningDataset);
System.out.println(evaluation.toSummaryString());
predictUnknownCases(learningDataset,predictiveModel);
//plotData(learningDataset, predictiveModel);
}
private void predictUnknownCases(Instances learningDataset, Classifier predictiveModel)
throws Exception {
Instance testMaleInstance =
createInstance(learningDataset,32., "male", 0) ;
Instance testFemaleInstance =
createInstance(learningDataset,32., "female", 0) ;
double malePrediction =
predictiveModel.classifyInstance(testMaleInstance);
double femalePrediction =
predictiveModel.classifyInstance(testFemaleInstance);
System.out.println("Predicted number of logins [age=32]: ");
System.out.println("\tMale = " + malePrediction);
System.out.println("\tFemale = " + femalePrediction);
}
private FastVector createAttributes() {
//create the numeric attribute Age
Attribute ageAttribute = new Attribute("age");
//create the nominal attribute Gender
FastVector genderAttributeValues = new FastVector(2);
genderAttributeValues.addElement("male");
genderAttributeValues.addElement("female");
Attribute genderAttribute = new Attribute("gender", genderAttributeValues);
//create the numLogins attribute
Attribute numLoginsAttribute = new Attribute("numLogins");
FastVector allAttributes = new FastVector(3);
allAttributes.addElement(ageAttribute);
allAttributes.addElement(genderAttribute);
allAttributes.addElement(numLoginsAttribute);
return allAttributes;
}
private Instances createLearningDataSet(FastVector allAttributes) {
Instances trainingDataSet =
new Instances("wekaTutorial", allAttributes, 4);
trainingDataSet.setClassIndex(2);
addInstance(trainingDataSet, 20.,"male", 5);
addInstance(trainingDataSet, 30.,"female", 2);
addInstance(trainingDataSet, 40.,"male", 3);
addInstance(trainingDataSet, 35.,"female", 4);
return trainingDataSet;
}
private void addInstance(Instances trainingDataSet,
double age,
String gender,
int numLogins)
{
Instance instance = createInstance(trainingDataSet,age, gender,numLogins);
trainingDataSet.add(instance);
}
private Instance createInstance(Instances associatedDataSet,
double age, String gender, int numLogins) {
// Create empty instance with three attribute values
Instance instance = new Instance(3);
instance.setDataset(associatedDataSet);
instance.setValue(0, age);
instance.setValue(1, gender);
instance.setValue(2, numLogins);
return instance;
}
private Classifier learnPredictiveModel(Instances learningDataset) throws Exception {
Classifier classifier = getClassifier();
classifier.buildClassifier(learningDataset);
return classifier;
}
private Classifier getClassifier() {
RBFNetwork rbfLearner = new RBFNetwork();
rbfLearner.setNumClusters(2);
return rbfLearner;
}
private Evaluation evaluatePredictiveModel(Classifier classifier, Instances learningDataset) throws Exception {
Evaluation learningSetEvaluation = new Evaluation(learningDataset);
learningSetEvaluation.evaluateModel(classifier, learningDataset);
return learningSetEvaluation;
}
private void plotData(Instances learningDataset, Classifier predictiveModel) throws Exception {
for (int i = 20; i <= 40; i ++) {
Instance testMaleInstance = createInstance(learningDataset,i, "male", 0) ;
Instance testFemaleInstance = createInstance(learningDataset,i, "female", 0) ;
System.out.println(i + ",male," + predictiveModel.classifyInstance(testMaleInstance));
System.out.println(i + ",female," + predictiveModel.classifyInstance(testFemaleInstance));
}
}
}
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