OPTIMIZING SYNTACTIC-SEMANTIC RELATION EXTRACTION FOR THE KAZAKH LANGUAGE WITH TRANSFORMER ARCHITECTURES AND SYNTHETIC CORPORA
https://doi.org/10.55452/1998-6688-2026-23-2-250-261
Abstract
Natural language processing (NLP) methods are widely used in search engines, decision-support systems, and many other intelligent applications. One of the essential yet technically demanding tasks in this area is the extraction of triple relations in the form “subject–predicate–object.” Such structures are the basis for knowledge graphs and reasoning, but for languages with limited annotated resources, like Kazakh, this task becomes especially difficult. In our work, we investigate how the use of synthetic data can partially compensate for the lack of linguistic resources. The experimental setup included the generation of additional training data, followed by the training and testing of a model based on the Cross-lingual Language Model – Robustly Optimized BERT Approach (XLMRoBERTa) for triple extraction. XLM-RoBERTa, an improved version of the Bidirectional Encoder Representations from Transformers (BERT) model, benefits from a larger training corpus and increased size. This architecture is effective in cross-linguistic transfer tasks without additional fine-tuning, even between languages with different writing systems. The results show an F1-score of 90.73%. This indicates that even relatively simple augmentation strategies, when combined with advanced models, may considerably improve model performance when working with low-resource languages. The study also suggests that the approach can be extended to other underrepresented languages and integrated into practical systems for information retrieval and knowledge management.
About the Authors
G. BektemyssovaKazakhstan
Professor.
Almaty
A. Sabdenov
Kazakhstan
PhD student.
Almaty
R. Satybaldiyeva
Russian Federation
Associate Professor.
Almaty
A. Bykov
Kazakhstan
Associate Professor.
Almaty
Binti Ali Nor'ashikin
Malaysia
Associate Professor.
Selangor
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Review
For citations:
Bektemyssova G., Sabdenov A., Satybaldiyeva R., Bykov A., Nor'ashikin B. OPTIMIZING SYNTACTIC-SEMANTIC RELATION EXTRACTION FOR THE KAZAKH LANGUAGE WITH TRANSFORMER ARCHITECTURES AND SYNTHETIC CORPORA. Herald of the Kazakh-British Technical University. 2026;23(2):250-261. https://doi.org/10.55452/1998-6688-2026-23-2-250-261
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