Examples of evaluateModel()


Examples of weka.classifiers.Evaluation.evaluateModel()

      for (int i = 0; i < m_numFoldsPruning; i++) {
  modelError[i] = new FastVector();

  m_roots[i].m_isLeaf = true;
  Evaluation eval = new Evaluation(test[i]);
  eval.evaluateModel(m_roots[i], test[i]);
  double error;
  if (m_UseErrorRate) error = eval.errorRate();
  else error = eval.rootMeanSquaredError();
  modelError[i].addElement(new Double(error));
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Examples of weka.classifiers.Evaluation.evaluateModel()

  for (int i=0; i<2; i++){
    m_Successors[i].makeLeaf(train);
  }

  Evaluation eval = new Evaluation(test);
  eval.evaluateModel(root, test);
  double error;
  if (useErrorRate) error = eval.errorRate();
  else error = eval.rootMeanSquaredError();
  modelError.addElement(new Double(error));
      }
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Examples of weka.classifiers.Evaluation.evaluateModel()

    o_Evaluation = new Evaluation(trainCopy);
    String [] oneROpts = { "-B", ""+getMinimumBucketSize()};
    Classifier oneR = Classifier.forName("weka.classifiers.rules.OneR", oneROpts);
    if (m_evalUsingTrainingData) {
      oneR.buildClassifier(trainCopy);
      o_Evaluation.evaluateModel(oneR, trainCopy);
    } else {
      /*      o_Evaluation.crossValidateModel("weka.classifiers.rules.OneR",
              trainCopy, 10,
              null, new Random(m_randomSeed)); */
      o_Evaluation.crossValidateModel(oneR, trainCopy, m_folds, new Random(m_randomSeed));
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Examples of weka.classifiers.Evaluation.evaluateModel()

   
    //testing classifier
    testTimeStart = System.currentTimeMillis();
    if(canMeasureCPUTime)
      CPUStartTime = thMonitor.getThreadUserTime(thID);
    predictions = eval.evaluateModel(m_Classifier, test);
    if(canMeasureCPUTime)
      testCPUTimeElapsed = thMonitor.getThreadUserTime(thID) - CPUStartTime;
    testTimeElapsed = System.currentTimeMillis() - testTimeStart;
    thMonitor = null;
   
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Examples of weka.classifiers.Evaluation.evaluateModel()

      trainCPUTimeElapsed = thMonitor.getThreadUserTime(thID) - CPUStartTime;
    trainTimeElapsed = System.currentTimeMillis() - trainTimeStart;
    testTimeStart = System.currentTimeMillis();
    if(canMeasureCPUTime)
      CPUStartTime = thMonitor.getThreadUserTime(thID);
    eval.evaluateModel(m_Classifier, test);
    if(canMeasureCPUTime)
      testCPUTimeElapsed = thMonitor.getThreadUserTime(thID) - CPUStartTime;
    testTimeElapsed = System.currentTimeMillis() - testTimeStart;
    thMonitor = null;
   
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Examples of weka.classifiers.Evaluation.evaluateModel()

    Evaluation eval;

    // error of unpruned tree
    if (errors != null) {
      eval = new Evaluation(test);
      eval.evaluateModel(this, test);
      errors[0] = eval.errorRate();
    }

    int iteration = 0;
    double preAlpha = Double.MAX_VALUE;
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Examples of weka.classifiers.Evaluation.evaluateModel()

      alphas[iteration] = nodeToPrune.m_Alpha;

      // log error
      if (errors != null) {
  eval = new Evaluation(test);
  eval.evaluateModel(this, test);
  errors[iteration] = eval.errorRate();
      }
      preAlpha = nodeToPrune.m_Alpha;

      //update errors/alphas
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Examples of weka.classifiers.Evaluation.evaluateModel()

    if (!m_isLeaf) {
      m_isLeaf = true; //temporarily make leaf

      // calculate distribution for evaluation
      eval.evaluateModel(this, m_train);
      m_numIncorrectModel = eval.incorrect();

      m_isLeaf = false;

      for (int i = 0; i < m_Successors.length; i++)
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Examples of weka.classifiers.Evaluation.evaluateModel()

      for (int i = 0; i < m_Successors.length; i++)
  m_Successors[i].modelErrors();

    } else {
      eval.evaluateModel(this, m_train);
      m_numIncorrectModel = eval.incorrect();
    }      
  }

  /**
 
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Examples of weka.classifiers.Evaluation.evaluateModel()

          // learning scheme.
    train = newData.trainCV(m_NumXValFolds, j, new Random (1));
    test = newData.testCV(m_NumXValFolds, j);
    currentClassifier.buildClassifier(train);
    evaluation.setPriors(train);
    evaluation.evaluateModel(currentClassifier, test);
  }
      } else {
  currentClassifier.buildClassifier(train);
  evaluation = new Evaluation(train);
  evaluation.evaluateModel(currentClassifier, test);
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