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Acquiring Terminological Relations with Neural Models for Multilingual LLOD Resources
Type of publication
Tezės kitame recenzuojamame leidinyje / Theses in other peer-reviewed publication (T1e)
Type of publication (old)
T2
Author(s)
Gromann, Dagmar |
Title
Acquiring Terminological Relations with Neural Models for Multilingual LLOD Resources
Date Issued
2022
Is part of
LLOD Approaches for Language Data Research and Management LLODREAM2022 : International Scientific Interdisciplinary Conference, September 21-22, 2022 : Abstract Book. ISBN 9786094880414
Field of Science
Abstract
Specialized communication strongly benefits from the availability of structured
and consistent domain-specific knowledge in LLOD language resources. Manually curating such language resources is cumbersome and time-intensive. Thus, automated
approaches for extracting terms, concepts, and their interrelations are required. Recent
advances in computational linguistics have enabled the training of highly multilingual
neural language models, such as GPT-3 or XLM-R, that can successfully be adapted to
various downstream tasks, from sentiment classification and text completion to information extraction. Furthermore, several approaches exist to extract and explore lexico-semantic relations by means of these language models, however, only few focus on
curating, representing, and interchanging domain-specific language resources in the
LLOD cloud.
Type of document
type::text::journal::journal article::research article
Language
Anglų / English (en)
Access Rights
Atviroji prieiga / Open Access