1. Neural text summarization for Hungarian.
- Author
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ZIJIAN GYŐZŐ YANG
- Subjects
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TEXT summarization , *HUNGARIAN language , *NATURAL language processing , *TRANSFORMER models - Abstract
One of the most important NLP tasks for the industry today is to produce an extract from longer text documents. This task is one of the hottest topics for the researchers and they have created some solutions for English. There are two types of the text summarization called extractive and abstractive. The goal of the first task is to find the relevant sentences from the text, while the second one should generate the extraction based on the original text. In this research I have built the first solutions for Hungarian text summarization systems both for extractive and abstractive subtasks. Different kinds of neural transformer-based methods were used and evaluated. I present in this publication the first Hungarian abstractive summarization tool based on mBART and mT5 models, which gained state-ofthe-art results. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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