/** * Compute and store statistics required for generating artificial data. * * @param data training instances * @exception Exception if statistics could not be calculated successfully */ protected void computeStats(Instances data) throws Exception { int numAttributes = data.numAttributes(); m_AttributeStats = new Vector(numAttributes); // use to map attributes to their stats for (int j = 0; j < numAttributes; j++) { if (data.attribute(j).isNominal()) { // Compute the probability of occurence of each distinct value int[] nomCounts = (data.attributeStats(j)).nominalCounts; double[] counts = new double[nomCounts.length]; if (counts.length < 2) throw new Exception("Nominal attribute has less than two distinct values!"); // Perform Laplace smoothing for (int i = 0; i < counts.length; i++) counts[i] = nomCounts[i] + 1; Utils.normalize(counts); double[] stats = new double[counts.length - 1]; stats[0] = counts[0]; // Calculate cumulative probabilities for (int i = 1; i < stats.length; i++) stats[i] = stats[i - 1] + counts[i]; m_AttributeStats.add(j, stats); } else if (data.attribute(j).isNumeric()) { // Get mean and standard deviation from the training data double[] stats = new double[2]; stats[0] = data.meanOrMode(j); stats[1] = Math.sqrt(data.variance(j)); m_AttributeStats.add(j, stats); } else System.err.println("Decorate can only handle numeric and nominal values."); } }
/** * Generates the classifier. * * @param data set of instances serving as training data * @throws Exception if the classifier has not been generated successfully */ public void buildClassifier(Instances data) throws Exception { // can classifier handle the data? getCapabilities().testWithFail(data); // remove instances with missing class m_theInstances = new Instances(data); m_theInstances.deleteWithMissingClass(); m_rr = new Random(1); if (m_theInstances.classAttribute().isNominal()) { // Set up class priors m_classPriorCounts = new double[data.classAttribute().numValues()]; Arrays.fill(m_classPriorCounts, 1.0); for (int i = 0; i < data.numInstances(); i++) { Instance curr = data.instance(i); m_classPriorCounts[(int) curr.classValue()] += curr.weight(); } m_classPriors = m_classPriorCounts.clone(); Utils.normalize(m_classPriors); } setUpEvaluator(); if (m_theInstances.classAttribute().isNumeric()) { m_disTransform = new weka.filters.unsupervised.attribute.Discretize(); m_classIsNominal = false; // use binned discretisation if the class is numeric ((weka.filters.unsupervised.attribute.Discretize) m_disTransform).setBins(10); ((weka.filters.unsupervised.attribute.Discretize) m_disTransform).setInvertSelection(true); // Discretize all attributes EXCEPT the class String rangeList = ""; rangeList += (m_theInstances.classIndex() + 1); // System.out.println("The class col: "+m_theInstances.classIndex()); ((weka.filters.unsupervised.attribute.Discretize) m_disTransform) .setAttributeIndices(rangeList); } else { m_disTransform = new weka.filters.supervised.attribute.Discretize(); ((weka.filters.supervised.attribute.Discretize) m_disTransform).setUseBetterEncoding(true); m_classIsNominal = true; } m_disTransform.setInputFormat(m_theInstances); m_theInstances = Filter.useFilter(m_theInstances, m_disTransform); m_numAttributes = m_theInstances.numAttributes(); m_numInstances = m_theInstances.numInstances(); m_majority = m_theInstances.meanOrMode(m_theInstances.classAttribute()); // Perform the search int[] selected = m_search.search(m_evaluator, m_theInstances); m_decisionFeatures = new int[selected.length + 1]; System.arraycopy(selected, 0, m_decisionFeatures, 0, selected.length); m_decisionFeatures[m_decisionFeatures.length - 1] = m_theInstances.classIndex(); // reduce instances to selected features m_delTransform = new Remove(); m_delTransform.setInvertSelection(true); // set features to keep m_delTransform.setAttributeIndicesArray(m_decisionFeatures); m_delTransform.setInputFormat(m_theInstances); m_dtInstances = Filter.useFilter(m_theInstances, m_delTransform); // reset the number of attributes m_numAttributes = m_dtInstances.numAttributes(); // create hash table m_entries = new Hashtable((int) (m_dtInstances.numInstances() * 1.5)); // insert instances into the hash table for (int i = 0; i < m_numInstances; i++) { Instance inst = m_dtInstances.instance(i); insertIntoTable(inst, null); } // Replace the global table majority with nearest neighbour? if (m_useIBk) { m_ibk = new IBk(); m_ibk.buildClassifier(m_theInstances); } // Save memory if (m_saveMemory) { m_theInstances = new Instances(m_theInstances, 0); m_dtInstances = new Instances(m_dtInstances, 0); } m_evaluation = null; }