Please use this identifier to cite or link to this item: http://repository.kln.ac.lk/handle/123456789/18366
Title: A Comprehensive Part of Speech (POS) Tag Set for Sinhala Language.
Authors: Dilshani, N.
Fernando, S.
Ranathunga, S.
Jayasena, S.
Dias, G.
Keywords: Lexical
Morphology
Natural Language Processing (NLP)
Parts of Speech (POS)
Sinhala
Issue Date: 2017
Publisher: The Third International Conference on Linguistics in Sri Lanka, ICLSL 2017. Department of Linguistics, University of Kelaniya, Sri Lanka.
Citation: Dilshani, N., Fernando, S., Ranathunga, S., Jayasena, S. and Dias, G. (2017). A Comprehensive Part of Speech (POS) Tag Set for Sinhala Language. The Third International Conference on Linguistics in Sri Lanka, ICLSL 2017. Department of Linguistics, University of Kelaniya, Sri Lanka. p59.
Abstract: Sinhala, which belongs to Indo-Aryan language family, is a morphologically complex language. Most of the features of the words are postpositionally affixed to the root word. Thus, well-developed Part of Speech (POS) tag sets for languages such as English cannot be easily adopted to create a POS tag set for Sinhala. Moreover, currently available Sinhala POS tag sets have many limitations such as the unavailability of tags for certain words. The objective of the research is to overcome and to identify ambiguities and limitations of the present POS tag sets for Sinhala language, and to develop a comprehensive multi-level tag set for Sinhala language. The new tag set was designed after a thorough evaluation of different types of corpora such as news articles and official government letters, and as well as an analysis of the existing POS tag set for Sinhala. This new tag set consists of 148 tags and is organized into 3 levels. Thus, it covers most of the word classes and inflection based grammatical variations of the Sinhala language. The ultimate purpose of developing this tag set is to implement an automatic POS tagger, which is an essential tool in implementing Natural Language Processing Applications. To train the automatic POS tagger, a corpus of 300000 words has been POS annotated manually using this tag set. This tag set produced an overall accuracy of 84.68% and it bypasses the other Sinhala POS taggers. However, this annotation is done only up to level 2 in the tag set. Annotating at level 3 has the potential to introduce many ambiguities to the manual annotation process, due to the large number of POS tags. Thus this opens up new research avenues to investigate on the use of inflectional morphological features of Sinhala language, in order to determine the POS tag of a word at the third level.
URI: http://repository.kln.ac.lk/handle/123456789/18366
Appears in Collections:ICLSL 2017

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