Kategorik verilerde sınıf dengesizliği durumunda makine öğrenimi algoritmalarının karşılaştırılması: Öğrencilerin başarı durumları üzerine bir uygulama
DOI:
https://doi.org/10.5281/zenodo.12637330Anahtar Kelimeler:
Eğitimde başarı tahmini, makine öğrenme algoritmaları, sınıf dengesizliğiÖzet
Makine öğrenme algoritmaları, eğitim bilimlerinde öğrenci performansını değerlendirmek üzere çeşitli amaçlar doğrultusunda uygulanmaktadır. Eğitim alanındaki veri setlerinin kategorik verilerden oluşması, sınıf dengesizliği sorununda alternatif veri türetme tekniklerinin kullanılmasını gerektirmektedir. Bu çalışma, bu durumu ele alarak öğrencilerin başarı durumlarını tahmin etmede kullanılan çeşitli makine öğrenimi algoritmalarının performanslarını karşılaştırmayı amaçlamaktadır. Uygulamada sınıf dengesizliğini çözmek üzere SmoteNC tekniğinden yararlanılmış ve analiz bulguları, beş farklı makine öğrenme tekniği ile değerlendirilmiştir. Veri analizi sonuçları, sınıf dengesizliği giderildiği takdirde, sınırlı sayıda gözlem içeren verilerde makine öğrenme algoritmalarının başarıyla uygulanabileceğini göstermektedir.
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