INTELLIGENT ANALYSIS USAGE IN AUTOMATED GRADING SYSTEMS
Abstract
Technology integration in education has grown in a more important role during the COVID-19 epidemic. As standard manual grading techniques have been shown to be insufficient – automation grading provides a more effective approach. However, assessing programming activities is challenging because students employ a variety of coding styles and technical stacks. Manual evaluation offers flexibility but lacks consistency and scalability. Furthermore, advanced levels of programming skill requires completely new approaches to task assessment. To solve these issues, improved approaches including both dynamic and static code analysis, reinforced by machine learning techniques, are essential.

Радіоелектроніка та молодь у XXI столітті. Т. 6 : Конференція "Інформаційні інтелектуальні системи": матеріали 28-го Міжнар. молодіж. форуму, 16–18 квітня 2024 р.
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Pages
257-258
Published
December 12, 2024
Copyright (c) 2024 Press of the Kharkiv National University of Radioelectronics
Details about this monograph
ISBN-13 (15)
978-966-659-396-5