Date
Publisher
arXiv
The study explores the potential of AI technologies in personalized learning,
suggesting the prediction of academic success through leadership personality
traits and machine learning modelling. The primary data were obtained from 129
master's students in the Environmental Engineering Department, who underwent
five leadership personality tests with 23 characteristics. Students used
self-assessment tools that included Personality Insight, Workplace Culture,
Motivation at Work, Management Skills, and Emotion Control tests. The test
results were combined with the average grade obtained from academic reports.
The study employed exploratory data analysis and correlation analysis. Feature
selection utilized Pearson correlation coefficients of personality traits. The
average grades were separated into three categories: fail, pass, and excellent.
The modelling process was performed by tuning seven ML algorithms, such as SVM,
LR, KNN, DT, GB, RF, XGBoost and LightGBM. The highest predictive performance
was achieved with the RF classifier, which yielded an accuracy of 87.50% for
the model incorporating 17 personality trait features and the leadership mark
feature, and an accuracy of 85.71% for the model excluding this feature. In
this way, the study offers an additional opportunity to identify students'
strengths and weaknesses at an early stage of their education process and
select the most suitable strategies for personalized learning.
What is the application?
Who age?
Study design
