This paper presents a Support Vector Machine predictive model to determine if prior programming knowledge and completion of in-class and take home formative assessment tasks might be suitable predictors of examination performance. Student data from the academic years 2012 - 2016 for an introductory programming course was captured via ViLLE e-learning tool for analysis. The results revealed that student prior programming knowledge and assessment scores captured in a predictive model, is a good fit of the data. However, while overall success of the model is significant, predictions on identifying at-risk students is neither high nor low and that persuaded us to include two more research questions. However, our preliminary post analysis on the...
AbstractEducational data mining is a growing field that uses the data obtained from educational info...
AbstractUsing predictive modeling methods, it is possible to identify at-risk students early and inf...
The extent to which grades in the first few weeks of a course can predict overall performance can be...
The pursuit of a deeper understanding of factors that influence student performance outcomes has lon...
This paper presents a new approach to automatically detect- ing lower-performing or “at-risk” studen...
This thesis details a longitudinal study on factors that influence introductory programming success...
The new students struggle to understand the introductory programming courses, due to its intricate n...
This thesis describes a longitudinal study on factors which predict academic success in introductory...
A model for predicting student performance on introductory programming modules is presented. The mod...
The high failure rates of many programming courses means there is a need to identify struggling stud...
Prediction of student performance in Introductory programming courses can assist struggling students...
Research over the past fifty years into predictors of programming performance has yielded little imp...
Research over the past fifty years into predictors of programming performance has yielded little imp...
Learning to program is difficult and can result in high drop out and failure rates. Numerous researc...
In this paper, we developed predictive models based on students’ reviewing behaviors in an Introduct...
AbstractEducational data mining is a growing field that uses the data obtained from educational info...
AbstractUsing predictive modeling methods, it is possible to identify at-risk students early and inf...
The extent to which grades in the first few weeks of a course can predict overall performance can be...
The pursuit of a deeper understanding of factors that influence student performance outcomes has lon...
This paper presents a new approach to automatically detect- ing lower-performing or “at-risk” studen...
This thesis details a longitudinal study on factors that influence introductory programming success...
The new students struggle to understand the introductory programming courses, due to its intricate n...
This thesis describes a longitudinal study on factors which predict academic success in introductory...
A model for predicting student performance on introductory programming modules is presented. The mod...
The high failure rates of many programming courses means there is a need to identify struggling stud...
Prediction of student performance in Introductory programming courses can assist struggling students...
Research over the past fifty years into predictors of programming performance has yielded little imp...
Research over the past fifty years into predictors of programming performance has yielded little imp...
Learning to program is difficult and can result in high drop out and failure rates. Numerous researc...
In this paper, we developed predictive models based on students’ reviewing behaviors in an Introduct...
AbstractEducational data mining is a growing field that uses the data obtained from educational info...
AbstractUsing predictive modeling methods, it is possible to identify at-risk students early and inf...
The extent to which grades in the first few weeks of a course can predict overall performance can be...