Text summarization is one of the most critical Natural Language Processing (NLP) tasks. More and more researches are conducted in this field every day. Pre-trained transformer-based encoder-decoder models have begun to gain popularity for these tasks. This paper proposes two methods to address this task and introduces a novel dataset named pn-summary for Persian abstractive text summarization. The models employed in this paper are mT5 and an encoder-decoder version of the ParsBERT model (i.e., a monolingual BERT model for Persian). These models are fine-tuned on the pn-summary dataset. The current work is the first of its kind and, by achieving promising results, can serve as a baseline for any future work.
Leveraging ParsBERT and Pretrained mT5 for Persian Abstractive Text Summarization
Persian abstractive text summarization is addressed using mT5 and ParsBERT models fine-tuned on a novel dataset named pn-summary.
- Year
- 2020
- Venue
- arXiv 2020
- Authors
- 3
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2012.11204ARXIV-DEFAULT
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