Many researchers have started extracting student behaviour by cleaning data collected from web environments and using it as features in machine learning (ML) models. Using log data collected from an online judge, we have compiled a set of successful features correlated with the student grade and applying them on a database representing 486 CS1 students. We used this set of features in ML pipelines which were optimised, featuring a combination of an automated approach with an evolutionary algorithm and hyperparameter-tuning with random search. As a result, we achieved an accuracy of 75.55%, using data from only the first two weeks to predict the student final grades. We show how our pipeline outperforms state-of-the-art work on similar scena...
In recent years Educational Data Mining (EDM) has emerged as a new field of research due to the deve...
The extent to which grades in the first few weeks of a course can predict overall performance can be...
Early prediction of student performance is a challenging research problem. In this study, we aim to ...
The high failure rates of many programming courses means there is a need to identify struggling stud...
Tools for automatic grading programming assignments, also known as Online Judges, have been widely u...
Predicting student performance as early as possible and analysing to which extent initial student be...
There is high failure and low academic performance in programming courses. To mitigate these problem...
Predicting student academic performance is a critical area of education research. Machine learning (...
Building predictive models to estimate the learner performance in the beginning of CS1 courses is es...
This thesis describes a longitudinal study on factors which predict academic success in introductory...
This paper describes a large, multi-institutional revalidation study conducted in the academic year ...
The impact of gamification has been typically evaluated via self-report assessments (questionnaires,...
Student performance is a critical factor in determining a university’s reputation because it has a n...
The present work proposes the application of machine learning techniques to predict the final grades...
Educational data mining has been extensively used to predict students’ performance in university cou...
In recent years Educational Data Mining (EDM) has emerged as a new field of research due to the deve...
The extent to which grades in the first few weeks of a course can predict overall performance can be...
Early prediction of student performance is a challenging research problem. In this study, we aim to ...
The high failure rates of many programming courses means there is a need to identify struggling stud...
Tools for automatic grading programming assignments, also known as Online Judges, have been widely u...
Predicting student performance as early as possible and analysing to which extent initial student be...
There is high failure and low academic performance in programming courses. To mitigate these problem...
Predicting student academic performance is a critical area of education research. Machine learning (...
Building predictive models to estimate the learner performance in the beginning of CS1 courses is es...
This thesis describes a longitudinal study on factors which predict academic success in introductory...
This paper describes a large, multi-institutional revalidation study conducted in the academic year ...
The impact of gamification has been typically evaluated via self-report assessments (questionnaires,...
Student performance is a critical factor in determining a university’s reputation because it has a n...
The present work proposes the application of machine learning techniques to predict the final grades...
Educational data mining has been extensively used to predict students’ performance in university cou...
In recent years Educational Data Mining (EDM) has emerged as a new field of research due to the deve...
The extent to which grades in the first few weeks of a course can predict overall performance can be...
Early prediction of student performance is a challenging research problem. In this study, we aim to ...