Learning to program is difficult and can result in high drop out and failure rates. Numerous research studies have attempted to determine the factors that influence programming success and to develop suitable prediction models. The models built tend to be statistical, with linear regression the most common technique used. Over a three year period a multi-institutional, multivariate study was performed to determine factors that influence programming success. In this paper an investigation of six machine learning algorithms for predicting programming success, using the predetermined factors, is described. Naïve Bayes was found to have the highest prediction accuracy. However, no significant statistical differences were found between the accur...
In this paper, the efficacy of machine learning (ML) techniques for predicting the academic success ...
Prediction is widely researched area in data mining domain due to its applications. There are many t...
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...
This thesis details a longitudinal study on factors that influence introductory programming success...
This thesis examines the application of machine learning algorithms to predict whether a student wil...
This research presented an educational software or instrument for predicting student success at Univ...
In recent years, the world's population is increasingly demanding to predict the future with certain...
Academic education is one of the key areas in the process of modernization of a country. The ability...
Abstract—Machine learning is a sub-field of computer science refers to a system’s ability to automat...
Much research has been conducted in the area of machine learning algorithms; however, the question o...
This thesis describes a longitudinal study on factors which predict academic success in introductory...
Predicting student academic performance is a critical area of education research. Machine learning (...
© Springer Nature Singapore Pte Ltd. 2019. Educational data mining has been widely used to predict s...
The new students struggle to understand the introductory programming courses, due to its intricate n...
In this paper, the efficacy of machine learning (ML) techniques for predicting the academic success ...
Prediction is widely researched area in data mining domain due to its applications. There are many t...
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...
This thesis details a longitudinal study on factors that influence introductory programming success...
This thesis examines the application of machine learning algorithms to predict whether a student wil...
This research presented an educational software or instrument for predicting student success at Univ...
In recent years, the world's population is increasingly demanding to predict the future with certain...
Academic education is one of the key areas in the process of modernization of a country. The ability...
Abstract—Machine learning is a sub-field of computer science refers to a system’s ability to automat...
Much research has been conducted in the area of machine learning algorithms; however, the question o...
This thesis describes a longitudinal study on factors which predict academic success in introductory...
Predicting student academic performance is a critical area of education research. Machine learning (...
© Springer Nature Singapore Pte Ltd. 2019. Educational data mining has been widely used to predict s...
The new students struggle to understand the introductory programming courses, due to its intricate n...
In this paper, the efficacy of machine learning (ML) techniques for predicting the academic success ...
Prediction is widely researched area in data mining domain due to its applications. There are many t...
Research over the past fifty years into predictors of programming performance has yielded little imp...