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Neural Network Model for Automated Test Generation for Students in the Moodle System Based on the Analysis of Methodological Materials

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  • K. S. Kurochka
  • Y. S. Basharymau

Abstract

  The article presents a system for automated generating of test tasks for students based on the analysis of methodological materials using large language models (LLM). A system capable of automatically generating high-quality test materials has been developed and tested, reducing teachers’ labor costs and increasing the efficiency of student knowledge monitoring. To achieve this goal, the following tasks were solved: developing a system architecture that includes modules for text preprocessing, question generation, validation and filtering, and forming a final test; studying the methods of prompting (precise and structured formulation of queries that define a task for LLM) and additional training of LLM for generating and assessing the quality of test items; testing the system in a real educational process and assessing its effectiveness. As a result of the study, a modular system has been developed that uses two LLMs: the main one for generating questions and the LLM expert system for assessing their quality. The effectiveness of the customization and additional training methods for adapting LLM to the tasks of automatic test generation is shown.

Suggested Citation

  • K. S. Kurochka & Y. S. Basharymau, 2025. "Neural Network Model for Automated Test Generation for Students in the Moodle System Based on the Analysis of Methodological Materials," Digital Transformation, Educational Establishment “Belarusian State University of Informatics and Radioelectronicsâ€, vol. 31(3).
  • Handle: RePEc:abx:journl:y:2025:id:957
    DOI: 10.35596/1729-7648-2025-31-3-66-75
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