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(How) Can I use Bigram Features with the OpenNLP Document Classifier?

I have a collection of very short documents (titles, phrases, and sentences), and I would like to add bigram features, of the kind used in the tool LibShortText

is this possible?

The documentation only explains how to do this using the Name Finder using the


and not the Document Classifier

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I believe the trainer and classifier allow for custom featuregenerators in their methods, however they must be implemntation of FeatureGenerator, and BigramFeatureGenerator is not an impl of that. So I made a quick impl as an inner class below.. so Try this (untested) code when you get a chance

    import java.util.ArrayList;
    import java.util.Arrays;
    import java.util.Collection;
    import java.util.Collections;
    import java.util.List;

    public class DoccatUsingBigram {

      public static void main(String[] args) throws IOException {
        InputStream dataIn = new FileInputStream(args[0]);
        try {

          ObjectStream<String> lineStream =
                  new PlainTextByLineStream(dataIn, "UTF-8");
//here you can use it as part of building the model
          ObjectStream<DocumentSample> sampleStream = new DocumentSampleStream(lineStream);
          DoccatModel model = DocumentCategorizerME.train("en", sampleStream, 10, 100, new MyBigramFeatureGenerator());

          ///now you would use it like this

          DocumentCategorizerME classifier = new DocumentCategorizerME(model);
          String[] someData = "whatever you are trying to classify".split(" ");
          Collection<String> bigrams = new MyBigramFeatureGenerator().extractFeatures(someData);
          double[] categorize = classifier.categorize(bigrams.toArray(new String[bigrams.size()]));

        } catch (IOException e) {
          // Failed to read or parse training data, training failed


      public static class MyBigramFeatureGenerator implements FeatureGenerator {

        public Collection<String> extractFeatures(String[] text) {
          return generate(Arrays.asList(text), 2, "");

        private  List<String> generate(List<String> input, int n, String separator) {

          List<String> outGrams = new ArrayList<String>();
          for (int i = 0; i < input.size() - (n - 2); i++) {
            String gram = "";
            if ((i + n) <= input.size()) {
              for (int x = i; x < (n + i); x++) {
                gram += input.get(x) + separator;
              gram = gram.substring(0, gram.lastIndexOf(separator));
          return outGrams;

hope this helps...

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You can use class in OpenNLP[1] for you use case.


Thanks, Madhawa

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