Gathika Ratnayaka


2020

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Effective Approach to Develop a Sentiment Annotator For Legal Domain in a Low Resource Setting
Gathika Ratnayaka | Nisansa de Silva | Amal Shehan Perera | Ramesh Pathirana
Proceedings of the 34th Pacific Asia Conference on Language, Information and Computation

2018

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Fast Approach to Build an Automatic Sentiment Annotator for Legal Domain using Transfer Learning
Viraj Salaka | Menuka Warushavithana | Nisansa de Silva | Amal Shehan Perera | Gathika Ratnayaka | Thejan Rupasinghe
Proceedings of the 9th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis

This study proposes a novel way of identifying the sentiment of the phrases used in the legal domain. The added complexity of the language used in law, and the inability of the existing systems to accurately predict the sentiments of words in law are the main motivations behind this study. This is a transfer learning approach which can be used for other domain adaptation tasks as well. The proposed methodology achieves an improvement of over 6% compared to the source model’s accuracy in the legal domain.