We present a system for automating Semantic Role Labelling of Hindi-English code-mixed tweets. We explore the issues posed by noisy, user generated code-mixed social media data. We also compare the individual effect of various linguistic features used in our system. Our proposed model is a 2-step system for automated labelling which gives an overall accuracy of 84% for Argument Classification, marking a 10% increase over the existing rulebased baseline model. This is the first attempt at building a statistical Semantic Role Labeller for Hindi-English code-mixed data, to the best of our knowledge.
CITATION STYLE
Pal, R., & Sharma, D. M. (2019). Towards automated semantic role labelling of hindi-english code-mixed tweets. In W-NUT@EMNLP 2019 - 5th Workshop on Noisy User-Generated Text, Proceedings (pp. 291–296). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/d19-5538
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