Persian Natural Language Inference: A Meta-learning approach
- URL: http://arxiv.org/abs/2205.08755v1
- Date: Wed, 18 May 2022 06:51:58 GMT
- Title: Persian Natural Language Inference: A Meta-learning approach
- Authors: Heydar Soudani, Mohammad Hassan Mojab, Hamid Beigy
- Abstract summary: This paper proposes a meta-learning approach for inferring natural language in Persian.
We evaluate the proposed method using four languages and an auxiliary task.
- Score: 6.832341432995628
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Incorporating information from other languages can improve the results of
tasks in low-resource languages. A powerful method of building functional
natural language processing systems for low-resource languages is to combine
multilingual pre-trained representations with cross-lingual transfer learning.
In general, however, shared representations are learned separately, either
across tasks or across languages. This paper proposes a meta-learning approach
for inferring natural language in Persian. Alternately, meta-learning uses
different task information (such as QA in Persian) or other language
information (such as natural language inference in English). Also, we
investigate the role of task augmentation strategy for forming additional
high-quality tasks. We evaluate the proposed method using four languages and an
auxiliary task. Compared to the baseline approach, the proposed model
consistently outperforms it, improving accuracy by roughly six percent. We also
examine the effect of finding appropriate initial parameters using zero-shot
evaluation and CCA similarity.
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