The most of collected data samples from E-learning systems consist of correlated information caused by overlapping input instances, which decrease the classifier credibility and reliability. This paper presents an improved classification model based on Deep Learning and Principal Component Analysis (PCA) method as its use in reducing the dimensionality of data. By this task, we introduce the best learning process to extract just the useful parameters that describe students’ per-formances in an E-learning system. One of the primary goals of this technique is to help earlier in detecting the dropouts and discovering of students who need special attention, so that the teachers could provide the appropriate counseling at the right time. This st...
Educational Data Mining and Deep learning play a crucial role in identifying academically weak stude...
The explosion of data usage has contributed to the requirement of processing extensive amount of da...
Opportunities to apply data mining techniques to analyze educational data and improve learning are i...
The most of collected data samples from E-learning systems consist of correlated information caused ...
The data in E-learning is generated as a result of the students' interactions during the learning se...
In recent years, schools have shown interest in utilizing data mining to improve the quality of educ...
The distinguished universities aim to provide quality education to their students. One way to achiev...
Predicting students’ academic performance at an early stage of a semester is one of the most ...
In this digital age, big-data sets are commonly found in the field of healthcare, manufacturing and ...
In this work, we investigate the using of Educational Data Mining (EDM) techniques based on Principa...
Educational Data Mining (EDM) is a research field that focuses on the application of data mining, ma...
Various types of derivative information have been increasing exponentially, based on mobile devices ...
© Published under licence by IOP Publishing Ltd. Deep neural networks with a large number of paramet...
This work enhances the analysis of the student performance in the high education level. This model c...
In this chapter, a comprehensive methodology is presented to address important data-driven challenge...
Educational Data Mining and Deep learning play a crucial role in identifying academically weak stude...
The explosion of data usage has contributed to the requirement of processing extensive amount of da...
Opportunities to apply data mining techniques to analyze educational data and improve learning are i...
The most of collected data samples from E-learning systems consist of correlated information caused ...
The data in E-learning is generated as a result of the students' interactions during the learning se...
In recent years, schools have shown interest in utilizing data mining to improve the quality of educ...
The distinguished universities aim to provide quality education to their students. One way to achiev...
Predicting students’ academic performance at an early stage of a semester is one of the most ...
In this digital age, big-data sets are commonly found in the field of healthcare, manufacturing and ...
In this work, we investigate the using of Educational Data Mining (EDM) techniques based on Principa...
Educational Data Mining (EDM) is a research field that focuses on the application of data mining, ma...
Various types of derivative information have been increasing exponentially, based on mobile devices ...
© Published under licence by IOP Publishing Ltd. Deep neural networks with a large number of paramet...
This work enhances the analysis of the student performance in the high education level. This model c...
In this chapter, a comprehensive methodology is presented to address important data-driven challenge...
Educational Data Mining and Deep learning play a crucial role in identifying academically weak stude...
The explosion of data usage has contributed to the requirement of processing extensive amount of da...
Opportunities to apply data mining techniques to analyze educational data and improve learning are i...