Academic performance has become an important evidence of determining the quality in Malaysia's education system. The examination data is collected on the previous students' examinations yet to be tested for their coming SPM. The other related data such as family background and schooling information are also involved. The raw data is preprocessed and analyzed using statistical method. The results from the statistical analysis indicate the significant contribution of these attributes to the achievement model. The combinations of input variables, hidden layer and output nodes are explored to predict the students' performance. Seven models are constructed based on seven subjects to relate them with other factors for the purpose of descriptive...
AbstractPredicting students performance becomes more challenging due to the large volume of data in ...
In recent years, there has been evidence of a growing interest on the part of universities to know i...
Predicting performance of students becomes extra challenging due to the huge volume of data in educa...
Data mining techniques have been used to search for patterns or trends in data that may help to expl...
Academic performance has become an important evidence of determining the quality in Malaysia's educa...
The purpose of this study is to build a neural network model for prediction of SPM achievement for t...
This study aims to develop the academic achievement prediction (ACP) model using Neural Networks. It...
The student academic achievement in the Sijil Pelajaran Malaysia (SPM) has been the important measur...
Sijil Pelajaran Malaysia (SPM) or Malaysia Certificate of Education is a national examination requir...
Student performance is related to complex and correlated factors. The implementation of a new advanc...
This study predicts the student performance at Universiti Pertahanan Nasional Malaysia (UPNM) based ...
This paper investigates the relationship between students' preadmission academic profile and final a...
Massive information can be collected from students' data in order to produce knowledge. The educatio...
Education domain offers many interest and challenge in data mining applications that potentially ide...
STEM is a curriculum based on the idea of educating students in four specific disciplines — science,...
AbstractPredicting students performance becomes more challenging due to the large volume of data in ...
In recent years, there has been evidence of a growing interest on the part of universities to know i...
Predicting performance of students becomes extra challenging due to the huge volume of data in educa...
Data mining techniques have been used to search for patterns or trends in data that may help to expl...
Academic performance has become an important evidence of determining the quality in Malaysia's educa...
The purpose of this study is to build a neural network model for prediction of SPM achievement for t...
This study aims to develop the academic achievement prediction (ACP) model using Neural Networks. It...
The student academic achievement in the Sijil Pelajaran Malaysia (SPM) has been the important measur...
Sijil Pelajaran Malaysia (SPM) or Malaysia Certificate of Education is a national examination requir...
Student performance is related to complex and correlated factors. The implementation of a new advanc...
This study predicts the student performance at Universiti Pertahanan Nasional Malaysia (UPNM) based ...
This paper investigates the relationship between students' preadmission academic profile and final a...
Massive information can be collected from students' data in order to produce knowledge. The educatio...
Education domain offers many interest and challenge in data mining applications that potentially ide...
STEM is a curriculum based on the idea of educating students in four specific disciplines — science,...
AbstractPredicting students performance becomes more challenging due to the large volume of data in ...
In recent years, there has been evidence of a growing interest on the part of universities to know i...
Predicting performance of students becomes extra challenging due to the huge volume of data in educa...