Huge amounts of data in educational datasets may cause the problem in producing quality data. Recently, data mining approach are increasingly used by educational data mining researchers for analyzing the data patterns. However, many research studies have concentrated on selecting suitable learning algorithms instead of performing feature selection process. As a result, these data has problem with computational complexity and spend longer computational time for classification. The main objective of this research is to provide an overview of feature selection techniques that have been used to analyze the most significant features. Then, this research will propose a framework to improve the quality of students’ dataset. The proposed framework ...
Recently, data mining is gaining more popularity among researcher. Data mining provides various tech...
Educational systems need innovative ways to improve quality of education to achieve the best results...
With hundreds or thousands of features in high dimensional data, computational workload is challengi...
In the recent years, web based learning has emerged as a new field of research due to growth of netw...
Student academic accomplishment is the foremost focus of every educational institution. In developin...
The value of schooling and academic performance of student is the topmost priority of all academic i...
It is a hot issue to be widely studied to determine the factors affecting students' performance from...
This work enhances the analysis of the student performance in the high education level. This model c...
Educational data mining is an emerging interdisciplinary research area involving both education and ...
The central problem in the process of a discovering knowledge from data, in the field of educational...
Feature selection is an important data pre-processing step that comes before applying a machine lear...
Educational sector produces data in large amount that is too voluminous and complex to understand. T...
In machine learning the classification task is commonly referred to as supervised learning. In super...
In recent years Educational Data Mining (EDM) has emerged as a new field of research due to the deve...
Creating learning environments, where students, parents, and teachers are linked to a learning proce...
Recently, data mining is gaining more popularity among researcher. Data mining provides various tech...
Educational systems need innovative ways to improve quality of education to achieve the best results...
With hundreds or thousands of features in high dimensional data, computational workload is challengi...
In the recent years, web based learning has emerged as a new field of research due to growth of netw...
Student academic accomplishment is the foremost focus of every educational institution. In developin...
The value of schooling and academic performance of student is the topmost priority of all academic i...
It is a hot issue to be widely studied to determine the factors affecting students' performance from...
This work enhances the analysis of the student performance in the high education level. This model c...
Educational data mining is an emerging interdisciplinary research area involving both education and ...
The central problem in the process of a discovering knowledge from data, in the field of educational...
Feature selection is an important data pre-processing step that comes before applying a machine lear...
Educational sector produces data in large amount that is too voluminous and complex to understand. T...
In machine learning the classification task is commonly referred to as supervised learning. In super...
In recent years Educational Data Mining (EDM) has emerged as a new field of research due to the deve...
Creating learning environments, where students, parents, and teachers are linked to a learning proce...
Recently, data mining is gaining more popularity among researcher. Data mining provides various tech...
Educational systems need innovative ways to improve quality of education to achieve the best results...
With hundreds or thousands of features in high dimensional data, computational workload is challengi...