Abstract |
Cross-lingual embedding models act as facilitator of lexical knowledge transfer and offer many advantages, notably their applicability to low-resource and non-standard language pairs, making them a valuable tool for retrieving translation equivalents in lexicography. Despite their potential, these models have primarily been developed with a focus on Natural Language Processing (NLP), leading to significant issues, including flawed training and evaluation data, as well as inadequate evaluation metrics and procedures. In this paper, we introduce cross-lingual embedding models for lexicography, addressing the challenges and limitations inherent in the current NLP-focused research. We demonstrate the problematic aspects across three baseline cross-lingual embedding models and three language pairs and outline possible solutions. We show the importance of high-quality data, advocating that its role is vital compared to algorithmic optimisation in enhancing the effectiveness of these models. |
BibTex |
@inproceedings{euralex_2024_paper_24, address = {Cavtat}, title = {The Automatic Determination of Translation Equivalents in Lexicography: What Works and What Doesn’t?},isbn = {978-953-7967-77-2}, shorttitle = {Euralex 2024}, url = {}, language = {eng}, booktitle = {Lexicography and Semantics. Proceedings of the XXI EURALEX International Congress}, publisher = {Institut za hrvatski jezik}, author = {Denisová, Michaela and de Schryver, Gilles-Maurice and Rychlý, Pavel}, editor = {Despot, Kristina Š. and Ostroški Anić, Ana and Brač, Ivana}, year = {2024}, pages = {305-317} } |