Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am new to opennlp , need help to customize the parser

I have the used the opennlp parser with the pre-trained model en-pos-maxtent.bin to tag new raw english sentences with the corresponding parts fo speech, now i would like to customize the tags.

example sentence: Dog jumped over the wall.

after POS tagging by using en-pos-maxtent.bin , the result would be

Dog - NNP

jumped - VBD

over - IN

the - DT

wall - NN

but i want to train my own model and tag the words with my custom tags like

DOG - PERP

jumped - ACT

over - OTH

the - OTH

wall - OBJ

where PERP, ACT,OTH,OBJ are the tags that suit my necessities. is this possible ?

I checked the section of their documentation, they have given code to train a model and use it later on , the code goes like this

try {
  dataIn = new FileInputStream("en-pos.train");
  ObjectStream<String> lineStream = new PlainTextByLineStream(dataIn, "UTF-8");
  ObjectStream<POSSample> sampleStream = new WordTagSampleStream(lineStream);

  model = POSTaggerME.train("en", sampleStream, TrainingParameters.defaultParams(), null, null);
}
catch (IOException e) {
  // Failed to read or parse training data, training failed
  e.printStackTrace();
}

I am not able to understand what this "en-pos.train" is ?

what is the format of this file ? can we specify the custom tags here or what exactly this file is ?

any help would be appreciated

Thanks

share|improve this question

1 Answer 1

It's documented at http://opennlp.apache.org/documentation/manual/opennlp.html#tools.postagger.training - one sentence per line, and the words are separated from their tags by an underscore:

About_IN 10_CD Euro_NNP ,_, I_PRP reckon_VBP ._.
That_DT sounds_VBZ good_JJ ._.
share|improve this answer
    
hi @Daniel , thanks for the link , i did try it and its working fine , but now the problem is that its not very accurate. my training data set is around 4 lines big. is that the reason ? should i provide a more diverse and big data set ? and one more thing , as i am defining new tags that it should use , does it use the context of the word? –  yash6 Oct 24 '13 at 5:35
    
Yes, you'll need to use (much) more data than four lines. I think there's also a default cutoff so that POS tags that don't occur at least n times in the training data are simply ignored. For testing, try setting the cutoff to 0. –  Daniel Naber Oct 24 '13 at 13:15

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.