IIIT Hyderabad Publications |
|||||||||
|
A Semisupervised Associative Classification Method for POS TaggingAuthors: Pratibha Rani,Vikram Pudi,Dipti Misra Sharma Conference: The 2014 International Conference on Data Science and Advanced Analytics (DSAA 2014) Location shanghai, China Date: 2014-10-30 Report no: IIIT/TR/2014/104 AbstractWe present here a data mining approach for part- of-speech (POS) tagging, an important Natural language processing (NLP) classification task. We propose a semi-supervised associative classification method for POS tagging. Existing methods for building POS taggers require extensive domain and linguistic knowledge and resources. Our method uses a combination of a small POS tagged corpus and untagged text data as training data to build the classifier model using association rules. Our tagger works well with very little training data also. The use of semi-supervised learning provides the advantage of not requiring a large high quality tagged corpus. These properties make it especially suitable for resource poor languages. Our experiments on various resource-rich, resource-moderate and resource-poor languages show good performance without using any language specific linguistic information. We note that inclusion of such features in our method may further improve the performance. Results also show that for smaller training data sizes our tagger performs better than state-of-the-art CRF tagger using same features as our tagger. Full paper: pdf Centre for Language Technologies Research Centre |
||||||||
Copyright © 2009 - IIIT Hyderabad. All Rights Reserved. |