Previous work on using BiLSTM models for PoS tagging has primarily focused on small tagsets. We evaluate BiLSTM models for tagging Icelandic, a morphologically rich language, using a relatively large tagset. Our baseline BiLSTM model achieves higher accuracy than any previously published tagger not taking advantage of a morphological lexicon. When we extend the model by incorporating such data, we outperform previous state-of-the-art results by a significant margin. We also report on work in progress that attempts to address the problem of data sparsity inherent in morphologically detailed, fine-grained tagsets. We experiment with training a separate model on only the lexical category and using the coarse-grained output tag as an input for the main model. This method further increases the accuracy and reduces the tagging errors by 21.3% compared to previous state-of-the-art results. Finally, we train and test our tagger on a new gold standard for Icelandic.
CITATION STYLE
Steingrímsson, S., Kárason, Ö., & Loftsson, H. (2019). Augmenting a BILSTM tagger with a morphological lexicon and a lexical category identification step. In International Conference Recent Advances in Natural Language Processing, RANLP (Vol. 2019-September, pp. 1161–1168). Incoma Ltd. https://doi.org/10.26615/978-954-452-056-4_133
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