Download full text
(external source)
Citation Suggestion
Please use the following Persistent Identifier (PID) to cite this document:
https://doi.org/10.22178/pos.115-26
Exports for your reference manager
The Role of Artificial Intelligence in Modern-Term Formation
[journal article]
Abstract The rapid expansion of scientific knowledge and digital content in the 21st century has significantly increased the demand for accurate, efficient, and scalable terminology development processes. Term formation - the creation, extraction, validation, and standardisation of specialised vocabulary - h... view more
The rapid expansion of scientific knowledge and digital content in the 21st century has significantly increased the demand for accurate, efficient, and scalable terminology development processes. Term formation - the creation, extraction, validation, and standardisation of specialised vocabulary - has traditionally been a manual endeavour by linguists, terminologists, and subject matter experts. However, with the growing complexity and volume of information, traditional methods are no longer sufficient to keep pace. Recent advancements in Artificial Intelligence (AI), particularly in Natural Language Processing (NLP), machine learning, and knowledge representation, are transforming terminology science. AI-powered systems can process vast multilingual and domain-specific corpora to automatically identify candidate terms, evaluate their relevance using semantic and statistical criteria, and suggest standardised forms and multilingual equivalents. These technologies support the automation of term extraction, filtering, clustering of semantic variants, and alignment across languages and disciplines. This article explores the core applications of AI in term formation, including automatic term extraction, term validation and filtering, semantic clustering, and standardisation. It also addresses integrating AI tools in multilingual environments and constructing terminological resources compatible with ontologies and knowledge graphs. While AI introduces speed, scalability, and contextual awareness to terminology management, it also raises challenges related to accuracy, cultural and linguistic sensitivity, and algorithmic bias. The study concludes that a hybrid model - combining AI's computational capabilities with expert human judgment - offers the most promising path toward creating dynamic, inclusive, and globally coherent terminological systems.... view less
Keywords
artificial intelligence; automation; technical language
Classification
Science of Literature, Linguistics
Free Keywords
term formation; terminology management; machine learning
Document language
English
Publication Year
2025
Page/Pages
p. 7006-7012
Journal
Path of Science, 11 (2025) 3
ISSN
2413-9009
Status
Published Version; peer reviewed