This paper describes a large, multi-institutional revalidation study conducted in the academic year 2015-16. Six hundred and ninetytwo students participated in this study, from 11 institutions (ten institutions in Ireland and one in Denmark). The primary goal was to validate and further develop an existing computational prediction model called Predict Student Success (PreSS). In doing so, this study addressed a call from the 2015 ITiCSE working group (the second Grand Challenge ), to systematically analyse and verify previous studies using data from multiple contexts to tease out tacit factors that contribute to previously observed outcomes . PreSS was developed and validated in a longitudinal study conducted over a three year period (twe...
Predicting student performance as early as possible and analysing to which extent initial student be...
This paper presents a new approach to automatically detect- ing lower-performing or “at-risk” studen...
This paper describes the results of an ITiCSE working group convened in 2013 to review and revisit t...
Background and Context: Computer Science attrition rates (in the western world) are very concerning,...
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...
Within education research there has been sustained interest in developing models that can predict, o...
Predicting student performance as early as possible and analysing to which extent initial student be...
PreSS# (Predict Student Success #) is a web based educational system developed during the academic ...
Many researchers have started extracting student behaviour by cleaning data collected from web envir...
This thesis details a longitudinal study on factors that influence introductory programming success...
This paper documents a study, carried out in the academic year 2003-2004, on fifteen factors that ma...
The high failure rates of many programming courses means there is a need to identify struggling stud...
Introductory undergraduate computer programming courses are renowned for higher than average failure...
Learning to program is difficult and can result in high drop out and failure rates. Numerous researc...
Predicting student performance as early as possible and analysing to which extent initial student be...
This paper presents a new approach to automatically detect- ing lower-performing or “at-risk” studen...
This paper describes the results of an ITiCSE working group convened in 2013 to review and revisit t...
Background and Context: Computer Science attrition rates (in the western world) are very concerning,...
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...
Within education research there has been sustained interest in developing models that can predict, o...
Predicting student performance as early as possible and analysing to which extent initial student be...
PreSS# (Predict Student Success #) is a web based educational system developed during the academic ...
Many researchers have started extracting student behaviour by cleaning data collected from web envir...
This thesis details a longitudinal study on factors that influence introductory programming success...
This paper documents a study, carried out in the academic year 2003-2004, on fifteen factors that ma...
The high failure rates of many programming courses means there is a need to identify struggling stud...
Introductory undergraduate computer programming courses are renowned for higher than average failure...
Learning to program is difficult and can result in high drop out and failure rates. Numerous researc...
Predicting student performance as early as possible and analysing to which extent initial student be...
This paper presents a new approach to automatically detect- ing lower-performing or “at-risk” studen...
This paper describes the results of an ITiCSE working group convened in 2013 to review and revisit t...