Package weka.filters.unsupervised.attribute

Examples of weka.filters.unsupervised.attribute.NominalToBinary


    }
  }
      }
     
      if (!onlyNumeric) {
  m_NominalToBinary = new NominalToBinary();
  m_NominalToBinary.setInputFormat(insts);
  insts = Filter.useFilter(insts, m_NominalToBinary);
      }
      else {
  m_NominalToBinary = null;
View Full Code Here


    m_Train = new Instances(insts);
   
    m_ReplaceMissingValues = new ReplaceMissingValues();
    m_ReplaceMissingValues.setInputFormat(m_Train);
    m_Train = Filter.useFilter(m_Train, m_ReplaceMissingValues);
    m_NominalToBinary = new NominalToBinary();
    m_NominalToBinary.setInputFormat(m_Train);
    m_Train = Filter.useFilter(m_Train, m_NominalToBinary);

    /** Randomize training data */
    if(m_Seed != -1) {
View Full Code Here

    m_Train = new Instances(insts);
    m_ReplaceMissingValues = new ReplaceMissingValues();
    m_ReplaceMissingValues.setInputFormat(m_Train);
    m_Train = Filter.useFilter(m_Train, m_ReplaceMissingValues);
   
    m_NominalToBinary = new NominalToBinary();
    m_NominalToBinary.setInputFormat(m_Train);
    m_Train = Filter.useFilter(m_Train, m_NominalToBinary);

    /** Randomize training data */
    m_Train.randomize(new Random(m_Seed));
View Full Code Here

    }
  }
      }
     
      if (!onlyNumeric) {
  m_NominalToBinary = new NominalToBinary();
  m_NominalToBinary.setInputFormat(insts);
  insts = Filter.useFilter(insts, m_NominalToBinary);
      } else {
  m_NominalToBinary = null;
      }
View Full Code Here

    m_Missing = new ReplaceMissingValues();
    m_Missing.setInputFormat(instances);
    instances = Filter.useFilter(instances, m_Missing);
   
    if (!m_onlyNumeric) {
      m_NominalToBinary = new NominalToBinary();
      m_NominalToBinary.setInputFormat(instances);
      instances = Filter.useFilter(instances, m_NominalToBinary);
    } else {
      m_NominalToBinary = null;
    }
View Full Code Here

    }
  }
      }
     
      if (!onlyNumeric) {
  m_NominalToBinary = new NominalToBinary();
  // exclude the bag attribute
  m_NominalToBinary.setAttributeIndices("2-last");
      }
      else {
  m_NominalToBinary = null;
View Full Code Here

    m_stopIt = true;
    m_stopped = true;
    m_accepted = false;
    m_numeric = false;
    m_random = null;
    m_nominalToBinaryFilter = new NominalToBinary();
    m_sigmoidUnit = new SigmoidUnit();
    m_linearUnit = new LinearUnit();
    //setting all the options to their defaults. To completely change these
    //defaults they will also need to be changed down the bottom in the
    //setoptions function (the text info in the accompanying functions should
View Full Code Here

    m_instances = new Instances(i);
    m_random = new Random(m_randomSeed);
    m_instances.randomize(m_random);

    if (m_useNomToBin) {
      m_nominalToBinaryFilter = new NominalToBinary();
      m_nominalToBinaryFilter.setInputFormat(m_instances);
      m_instances = Filter.useFilter(m_instances,
             m_nominalToBinaryFilter);
    }
    m_numAttributes = m_instances.numAttributes() - 1;
View Full Code Here

      m_normalizeFilter = new Normalize();
      m_normalizeFilter.setInputFormat(m_trainInstances);
      m_trainInstances = Filter.useFilter(m_trainInstances, m_normalizeFilter);
    } */

    m_nominalToBinFilter = new NominalToBinary();
    m_nominalToBinFilter.setInputFormat(m_trainInstances);
    m_trainInstances = Filter.useFilter(m_trainInstances,
                                        m_nominalToBinFilter);
   
    // delete any attributes with only one distinct value or are all missing
View Full Code Here

    m_Missing = new ReplaceMissingValues();
    m_Missing.setInputFormat(instances);
    instances = Filter.useFilter(instances, m_Missing);
   
    if (!m_onlyNumeric) {
      m_NominalToBinary = new NominalToBinary();
      m_NominalToBinary.setInputFormat(instances);
      instances = Filter.useFilter(instances, m_NominalToBinary);
    } else {
      m_NominalToBinary = null;
    }
View Full Code Here

TOP

Related Classes of weka.filters.unsupervised.attribute.NominalToBinary

Copyright © 2018 www.massapicom. All rights reserved.
All source code are property of their respective owners. Java is a trademark of Sun Microsystems, Inc and owned by ORACLE Inc. Contact coftware#gmail.com.