Makine Öğrenimi ve Çok Boyutlu Anket Verileri Kullanılarak Öğrenci Başarısının Tahmini: Eğitim Programı Üzerine Bir Uygulama

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Bibliographic Details
Title: Makine Öğrenimi ve Çok Boyutlu Anket Verileri Kullanılarak Öğrenci Başarısının Tahmini: Eğitim Programı Üzerine Bir Uygulama
Authors: Behsi, Zeynep, Dereli, Serhan, Çakar, Tuna, Patel, Jay Nimish, Cicek, Gultekin, Drias, Yassine
Publisher Information: Institute of Electrical and Electronics Engineers Inc., 2025.
Publication Year: 2025
Subject Terms: Survey Data, Adaboost, K-Means++ Clustering, K-Means Clustering, Machine-Learning, Learning Systems, Student Success, LightGBM, Smote, Lightgbm, Student Success Prediction, Machine Learning, Case-Studies, Educational Program, Education Computing, Logistic Regression, Students, SMOTE, Machine Learning Models, Forecasting
Description: This study develops a machine learning model integrating survey data and performance metrics to predict student success in the UpSchool education program. Students' personality traits assessed by DISC analysis, financial management, social, and emotional skills were clustered into "Successful,""Unsuccessful,"and "Moderately Successful"groups using K-means clustering. The SMOTE technique addressed data imbalance issues, and algorithms such as Logistic Regression, Random Forest, LightGBM, and AdaBoost were tested. After hyperparameter optimization, AdaBoost and LightGBM achieved the highest predictive performance. Results demonstrated the effectiveness of machine learning models in forecasting student success in educational programs. Future studies are recommended to enhance model performance through expanded datasets and to validate the model's applicability across diverse educational contexts. © 2025 Elsevier B.V., All rights reserved.
Isik University
Document Type: Conference object
Language: Turkish
DOI: 10.1109/siu66497.2025.11112134
Access URL: https://hdl.handle.net/20.500.11779/3102
Accession Number: edsair.od......3570..1f4b3c3f8c1d67b095e5612f3618ac9e
Database: OpenAIRE
Description
Abstract:This study develops a machine learning model integrating survey data and performance metrics to predict student success in the UpSchool education program. Students' personality traits assessed by DISC analysis, financial management, social, and emotional skills were clustered into "Successful,""Unsuccessful,"and "Moderately Successful"groups using K-means clustering. The SMOTE technique addressed data imbalance issues, and algorithms such as Logistic Regression, Random Forest, LightGBM, and AdaBoost were tested. After hyperparameter optimization, AdaBoost and LightGBM achieved the highest predictive performance. Results demonstrated the effectiveness of machine learning models in forecasting student success in educational programs. Future studies are recommended to enhance model performance through expanded datasets and to validate the model's applicability across diverse educational contexts. © 2025 Elsevier B.V., All rights reserved.<br />Isik University
DOI:10.1109/siu66497.2025.11112134