Tibetan Word Segmentation Based on Word-Position Tagging

@article{Kang2013TibetanWS,
  title={Tibetan Word Segmentation Based on Word-Position Tagging},
  author={Caijun Kang and Di Jiang and Congjun Long},
  journal={2013 International Conference on Asian Language Processing},
  year={2013},
  pages={239-242}
}
The best advantage of Tibetan word segmentation based on word-position is to reduce segmentation errors for unknown words. In this article authors upgrade usual 4-tag set to 6-tag set to fit in with the features of Tibetan characters, using CRF as tagging model to train and test corpus data, then building post processing modules to revise the result data. The experimental result shows that this method achieves a good performance and deserves further study, including expanding the corpus and… CONTINUE READING