1. Dealing with Abbreviations in the Slovenian Biographical Lexicon
- Author
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Daza, Angel, Fokkens, Antske, and Erjavec, Tomaž
- Subjects
Computer Science - Computation and Language - Abstract
Abbreviations present a significant challenge for NLP systems because they cause tokenization and out-of-vocabulary errors. They can also make the text less readable, especially in reference printed books, where they are extensively used. Abbreviations are especially problematic in low-resource settings, where systems are less robust to begin with. In this paper, we propose a new method for addressing the problems caused by a high density of domain-specific abbreviations in a text. We apply this method to the case of a Slovenian biographical lexicon and evaluate it on a newly developed gold-standard dataset of 51 Slovenian biographies. Our abbreviation identification method performs significantly better than commonly used ad-hoc solutions, especially at identifying unseen abbreviations. We also propose and present the results of a method for expanding the identified abbreviations in context., Comment: To be presented at The 2022 Conference on Empirical Methods in Natural Language Processing (EMNLP 2022)
- Published
- 2022