Сomparative analysis of grading models using fuzzy logic to enhance fairness and consistency in student performance evaluation

Автор
Дата
2025Редактор
ISSN
2331-186Xxmlui.dri2xhtml.METS-1.0.item-identifier-citation
Alibek Barlybayev, Bibigul Razakhova, Altynbek Sharipbay, Aizhan Nazyrova, Nazira Tursynova, Altanbek Zulkhazhav & Gaziza Yelibayeva (2025) Сomparative analysis of grading models using fuzzy logic to enhance fairness and consistency in student performance evaluation, Cogent Education, 12:1, 2481008, DOI: 10.1080/2331186X.2025.2481008
Аннотации
The article examines the continuous assessment of student performance as a crucial
element of modern educational processes for achieving learning objectives.
Traditional assessment methods, such as exams and grading systems, do not always
reflect the diversity of learning styles and individual characteristics of students, creating gaps in fairness and accuracy. As a solution to this issue, the study proposes a
Fuzzy Logic Model (FLM), which serves as an innovative approach to assessing student
performance. The study, conducted on a sample of 33 students enrolled in the
‘Object-Oriented Programming in Java’ course, compares the effectiveness of the FLM
with traditional grading systems such as national standards, arithmetic mean, as well
as institutional schemes including the U.S. Grade Point Average system and India’s
Central Board of Secondary Education system. The advantage of the FLM lies in its
ability to model uncertainty and subjective elements of assessment, making the system more flexible and comprehensive. The results of the study show that the FLM
can provide a fairer, more accurate and individualized assessment, better reflecting
the complexity and multifaceted nature of student performance. The article emphasizes the importance of continuously improving assessment methods to meet modern
educational demands, highlighting the relevance of using adaptive models such as
fuzzy logic to enhance educational outcomes and increase the fairness of assessments.
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