PREDICTING COURSE GRADES OF STUDENTS’ ACADEMIC PERFORMANCE USING THE LIGHTGBM REGRESSOR.

dc.contributor.authorBairamova D.
dc.date.accessioned2024-01-04T03:36:39Z
dc.date.available2024-01-04T03:36:39Z
dc.date.issued2023
dc.description.abstractAbstract. In the modern world, using all available opportunities and technologies, special attention should be paid to the development of the education system of students, since education serves as the basis for the development of the future generation. Nowadays, thanks to the use of available Artificial Intelligence methods, it is possible to predict various events, anomalies or other important things. With the help of machine learning, it is possible to predict at an early stage of a student's education whether he will finish the course successfully or not. In this study, it is proposed to predict the final score which student will receive at the end of the course using a number of predictors as an assessment for the first quiz and 3 types of tasks using the LightGBM regressor, which is a high-performance algorithm with gradient boosting. The results of using the LGBM regressor using GridSearchCV allowed to determine the best settings of hyperparameters from three selected tree-like boosting methods: 'dart', 'gbdt', 'goss'. The GOSS method was determined to be the best of the three methods listed with an estimate of R2 score in 0.81, which is 0.24 more than the R2 score of the Linear Regression forecast of — (0.57).
dc.identifier.citationDiana Bairamova / PREDICTING COURSE GRADES OF STUDENTS’ ACADEMIC PERFORMANCE USING THE LIGHTGBM REGRESSOR / СДУ хабаршысы - 2023
dc.identifier.issn2709-2631
dc.identifier.urihttps://repository.sdu.edu.kz/handle/123456789/1089
dc.language.isoen
dc.publisherСДУ хабаршысы - 2023
dc.subjectMachine learning
dc.subjectgrades prediction
dc.subjectoutliers’ identification
dc.subjectLGBM Regressor
dc.subjectLinear Regression
dc.subjectСДУ хабаршысы - 2023
dc.subject№1
dc.titlePREDICTING COURSE GRADES OF STUDENTS’ ACADEMIC PERFORMANCE USING THE LIGHTGBM REGRESSOR.
dc.typeArticle

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