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Method of Automatic Generation of Questions and Answers for Knowledge Testing Systems

https://doi.org/10.35596/1729-7648-2025-23-3-54-61

Abstract

The technique of automatic generation of questions and answers for knowledge testing is considered. The proposed approach is based on the developed method of defining and using clusters of keywords to generate questions and answers based on a global or local language model, which constitutes theoretical and applied novelty. Clusters are built on the basis of a corpus of text documents related to the studied area (textbooks, methodological manuals, electronic resources). The technical solution presented in the article is logically complete and can serve as a basis for practical developments.

About the Authors

S. А. Migalevich
Belarusian State University of Informatics and Radioelectronics
Belarus
Head of the Center of Informatization and Innovations, Applicant at the Department of Software Provision of Information Technologies


Ju. O. German
Belarusian State University of Informatics and Radioelectronics
Belarus
German Ju. O., Сand. Sci. (Tech.), Associate Professor at the Information Technologies in Automatized System Department


O. V. German
Belarusian State University of Informatics and Radioelectronics
Belarus
German O. V., Сand. Sci. (Tech.), Associate Professor at the Information Technologies in Automatized System Department


References

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Review

For citations:


Migalevich S.А., German J.O., German O.V. Method of Automatic Generation of Questions and Answers for Knowledge Testing Systems. Doklady BGUIR. 2025;23(3):54-61. (In Russ.) https://doi.org/10.35596/1729-7648-2025-23-3-54-61

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ISSN 1729-7648 (Print)
ISSN 2708-0382 (Online)