getCapabilities().testWithFail(data);
/** * Initialize the classifier. * * @param data the training data to be used for generating the boosted * classifier. * @throws Exception if the classifier could not be built successfully */ public void initializeClassifier(Instances data) throws Exception { super.buildClassifier(data); // can classifier handle the data? getCapabilities().testWithFail(data); // remove instances with missing class data = new Instances(data); data.deleteWithMissingClass(); m_ZeroR = new weka.classifiers.rules.ZeroR(); m_ZeroR.buildClassifier(data); m_NumClasses = data.numClasses(); m_Betas = new double[m_Classifiers.length]; m_NumIterationsPerformed = 0; m_TrainingData = new Instances(data); m_RandomInstance = new Random(m_Seed); if ((m_UseResampling) || (!(m_Classifier instanceof WeightedInstancesHandler))) { // Normalize weights so that they sum to one and can be used as sampling probabilities double sumProbs = m_TrainingData.sumOfWeights(); for (int i = 0; i < m_TrainingData.numInstances(); i++) { m_TrainingData.instance(i).setWeight(m_TrainingData.instance(i).weight() / sumProbs); } } }