Example #1
0
  /**
   * Prints out the classifier.
   *
   * @return a description of the classifier as a string
   */
  public String toString() {
    StringBuffer text = new StringBuffer();

    if (m_optimizer == null || !m_optimizer.modelBuilt()) {
      return "SMOreg: No model built yet.";
    }

    try {
      text.append(m_optimizer.toString());
    } catch (Exception e) {
      return "Can't print SMVreg classifier.";
    }

    return text.toString();
  }
Example #2
0
 /**
  * number of kernel cache hits used during learing
  *
  * @return the number of kernel cache hits
  */
 protected double measureCacheHits() {
   if (m_optimizer != null) {
     return m_optimizer.getCacheHits();
   } else {
     return 0;
   }
 }
Example #3
0
 /**
  * number of kernel evaluations used in learing
  *
  * @return the number of kernel evaluations
  */
 protected double measureKernelEvaluations() {
   if (m_optimizer != null) {
     return m_optimizer.getKernelEvaluations();
   } else {
     return 0;
   }
 }
Example #4
0
  /**
   * Classifies the given instance using the linear regression function.
   *
   * @param instance the test instance
   * @return the classification
   * @throws Exception if classification can't be done successfully
   */
  public double classifyInstance(Instance instance) throws Exception {
    // Filter instance
    m_Missing.input(instance);
    m_Missing.batchFinished();
    instance = m_Missing.output();

    if (!m_onlyNumeric && m_NominalToBinary != null) {
      m_NominalToBinary.input(instance);
      m_NominalToBinary.batchFinished();
      instance = m_NominalToBinary.output();
    }

    if (m_Filter != null) {
      m_Filter.input(instance);
      m_Filter.batchFinished();
      instance = m_Filter.output();
    }

    double result = m_optimizer.SVMOutput(instance);
    return result * m_x1 + m_x0;
  }
Example #5
0
  /**
   * Method for building the classifier.
   *
   * @param instances the set of training instances
   * @throws Exception if the classifier can't be built successfully
   */
  public void buildClassifier(Instances instances) throws Exception {
    // can classifier handle the data?
    getCapabilities().testWithFail(instances);

    // remove instances with missing class
    instances = new Instances(instances);
    instances.deleteWithMissingClass();

    // Removes all the instances with weight equal to 0.
    // MUST be done since condition (8) of Keerthi's paper
    // is made with the assertion Ci > 0 (See equation (3a).
    Instances data = new Instances(instances, 0);
    for (int i = 0; i < instances.numInstances(); i++) {
      if (instances.instance(i).weight() > 0) {
        data.add(instances.instance(i));
      }
    }

    if (data.numInstances() == 0) {
      throw new Exception(
          "No training instances left after removing "
              + "instance with either a weight null or a missing class!");
    }
    instances = data;

    m_onlyNumeric = true;
    for (int i = 0; i < instances.numAttributes(); i++) {
      if (i != instances.classIndex()) {
        if (!instances.attribute(i).isNumeric()) {
          m_onlyNumeric = false;
          break;
        }
      }
    }
    m_Missing = new ReplaceMissingValues();
    m_Missing.setInputFormat(instances);
    instances = Filter.useFilter(instances, m_Missing);

    if (getCapabilities().handles(Capability.NUMERIC_ATTRIBUTES)) {
      if (!m_onlyNumeric) {
        m_NominalToBinary = new NominalToBinary();
        m_NominalToBinary.setInputFormat(instances);
        instances = Filter.useFilter(instances, m_NominalToBinary);
      } else {
        m_NominalToBinary = null;
      }
    } else {
      m_NominalToBinary = null;
    }

    // retrieve two different class values used to determine filter transformation
    double y0 = instances.instance(0).classValue();
    int index = 1;
    while (index < instances.numInstances() && instances.instance(index).classValue() == y0) {
      index++;
    }
    if (index == instances.numInstances()) {
      // degenerate case, all class values are equal
      // we don't want to deal with this, too much hassle
      throw new Exception(
          "All class values are the same. At least two class values should be different");
    }
    double y1 = instances.instance(index).classValue();

    // apply filters
    if (m_filterType == FILTER_STANDARDIZE) {
      m_Filter = new Standardize();
      ((Standardize) m_Filter).setIgnoreClass(true);
      m_Filter.setInputFormat(instances);
      instances = Filter.useFilter(instances, m_Filter);
    } else if (m_filterType == FILTER_NORMALIZE) {
      m_Filter = new Normalize();
      ((Normalize) m_Filter).setIgnoreClass(true);
      m_Filter.setInputFormat(instances);
      instances = Filter.useFilter(instances, m_Filter);
    } else {
      m_Filter = null;
    }
    if (m_Filter != null) {
      double z0 = instances.instance(0).classValue();
      double z1 = instances.instance(index).classValue();
      m_x1 =
          (y0 - y1) / (z0 - z1); // no division by zero, since y0 != y1 guaranteed => z0 != z1 ???
      m_x0 = (y0 - m_x1 * z0); // = y1 - m_x1 * z1
    } else {
      m_x1 = 1.0;
      m_x0 = 0.0;
    }

    m_optimizer.setSMOReg(this);
    m_optimizer.buildClassifier(instances);
  }