AbstractThis paper presents a neural network approach to classify student graduation status based upon selected academic, demographic, and other indicators. A multi-layer feedforward network with backpropagation learning is used as the model framework. The model is trained, tested, and validated using 5100 student samples with data compiled from admissions records and institutional research databases. Nine input variables consist of categorical and numeric data elements including: high school rank, high school quality, standardized test scores, high school faculty assessments, extra-curricular activity score, parent's education status, and time since high school graduation. These inputs and the multi-layer neural network model are used to c...
The purpose of this study is to examine a neural network based approach to predict achievement in gr...
The study period of the student in a tertiary institution is undoubtedly essential in implementing t...
Predicting MBA student performance for admission decisions is crucial for educational institutions. ...
This paper presents a neural network approach to classify student graduation status based upon selec...
Declining graduation rates are a serious and serious problem in higher education. Students drop out ...
This paper presents an evolutionary neural network approach to classify student graduation status ba...
Predicting student graduation rates in institutes of higher education is of great value to the insti...
This study applies neural network to predict students' graduation rates. The purpose of this study i...
When new students enroll at the university, they need to fill application forms that incorporate any...
Predicting and understanding different key outcomes in a student's academic trajectory such as grade...
Predicting timing of student graduation would be a valuable input for the management of ...
A significant problem in higher education is the poor results of students after admission. Many stud...
The distinguished universities aim to provide quality education to their students. One way to achiev...
AbstractThis study exploits three methods, namely the Back-propagation Neural Network (BPNN), Classi...
The observed poor quality of graduates of some Nigerian Universities in recent times has been traced...
The purpose of this study is to examine a neural network based approach to predict achievement in gr...
The study period of the student in a tertiary institution is undoubtedly essential in implementing t...
Predicting MBA student performance for admission decisions is crucial for educational institutions. ...
This paper presents a neural network approach to classify student graduation status based upon selec...
Declining graduation rates are a serious and serious problem in higher education. Students drop out ...
This paper presents an evolutionary neural network approach to classify student graduation status ba...
Predicting student graduation rates in institutes of higher education is of great value to the insti...
This study applies neural network to predict students' graduation rates. The purpose of this study i...
When new students enroll at the university, they need to fill application forms that incorporate any...
Predicting and understanding different key outcomes in a student's academic trajectory such as grade...
Predicting timing of student graduation would be a valuable input for the management of ...
A significant problem in higher education is the poor results of students after admission. Many stud...
The distinguished universities aim to provide quality education to their students. One way to achiev...
AbstractThis study exploits three methods, namely the Back-propagation Neural Network (BPNN), Classi...
The observed poor quality of graduates of some Nigerian Universities in recent times has been traced...
The purpose of this study is to examine a neural network based approach to predict achievement in gr...
The study period of the student in a tertiary institution is undoubtedly essential in implementing t...
Predicting MBA student performance for admission decisions is crucial for educational institutions. ...