Attapol T. Rutherford
2025
The Thai Universal Dependency Treebank
Panyut Sriwirote
|
Wei Qi Leong
|
Charin Polpanumas
|
Santhawat Thanyawong
|
William Chandra Tjhi
|
Wirote Aroonmanakun
|
Attapol T. Rutherford
Transactions of the Association for Computational Linguistics, Volume 13
Automatic dependency parsing of Thai sentences has been underexplored, as evidenced by the lack of large Thai dependency treebanks with complete dependency structures and the lack of a published evaluation of state-of-the-art models, especially transformer-based parsers. In this work, we addressed these gaps by introducing the Thai Universal Dependency Treebank (TUD), a new Thai treebank consisting of 3,627 trees annotated according to the Universal Dependencies (UD) framework. We then benchmarked 92 dependency parsing models that incorporate pretrained transformers on Thai-PUD and our TUD, achieving state-of-the-art results and shedding light on the optimal model components for Thai dependency parsing. Our error analysis of the models also reveals that polyfunctional words, serial verb construction, and lack of rich morphosyntactic features present main challenges for Thai dependency parsing.
2024
The Thai Discourse Treebank: Annotating and Classifying Thai Discourse Connectives
Ponrawee Prasertsom
|
Apiwat Jaroonpol
|
Attapol T. Rutherford
Transactions of the Association for Computational Linguistics, Volume 12
Discourse analysis is a highly applicable area of natural language processing. In English and other languages, resources for discourse-based tasks are widely available. Thai, however, has hitherto lacked such resources. We present the Thai Discourse Treebank, the first, large Thai corpus annotated in the style of the Penn Discourse Treebank. The resulting corpus has over 10,000 sentences and 18,000 instances of connectives in 33 different relations. We release the corpus alongside our list of 148 potentially polysemous discourse connectives with a total of 340 form-sense pairs and their classification criteria to facilitate future research. We also develop models for connective identification and classification tasks. Our best models achieve an F1 of 0.96 in the identification task and 0.46 on the sense classification task. Our results serve as benchmarks for future models for Thai discourse tasks.
Search
Fix data
Co-authors
- Wirote Aroonmanakun 1
- Apiwat Jaroonpol 1
- Wei Qi Leong 1
- Charin Polpanumas 1
- Ponrawee Prasertsom 1
- show all...
Venues
- tacl2