This paper presents the results of seven deep learning models for prediction of research project execution in graduates from a public university in Peru. The deep learning models implemented are non-hybrid: Deep Neural Networks (DNN), Long Short-Term Memory (LSTM), Gated Recurrent Unit (GRU), Convolutional Neural Networks (CNN) and, hybrid: CNN+GRU, CNN+ LSTM and LSTM+GRU. Since most of the dataset prediction features are of the nominal type (true false), this paper proposes a simple novel data augmentation technique for this type of features. Taking as inspiration the input data type of a neural network, the proposal data augmentation technique considers nominal features as numeric, and obtain random values close to them to generate synthe...
Predicting students’ academic performance at an early stage of a semester is one of the most ...
Regression analysis, in statistic a modelling, is a set of statical processes that can be used to es...
This FYP project constitutes developing and evaluating deep learning models for 2 primary tasks – Re...
This paper presents the results of seven deep learning models for prediction of research project exe...
Abstract Student performance prediction is an important aspect of education that has gained signific...
In recent years, there has been evidence of a growing interest on the part of universities to know i...
The data in E-learning is generated as a result of the students' interactions during the learning se...
A comprehensive systematic study was carried out in order to identify various deep learning methods ...
Educational Data Mining and Deep learning play a crucial role in identifying academically weak stude...
Nowadays due to technological revolution huge amount of data is generated in every fields including ...
Acknowledgements: The authors highly express their gratitude to Asian University for Women, Chattogr...
Educational data generated through various platforms such as e-learning, e-admission systems, and au...
Educational Data Mining plays a crucial role in identifying academically weak students of an institu...
The present work has as objective to apply data mining techniques to develop a predictive model to f...
Large data transfers are getting more critical with the increasing volume of data in scientific comp...
Predicting students’ academic performance at an early stage of a semester is one of the most ...
Regression analysis, in statistic a modelling, is a set of statical processes that can be used to es...
This FYP project constitutes developing and evaluating deep learning models for 2 primary tasks – Re...
This paper presents the results of seven deep learning models for prediction of research project exe...
Abstract Student performance prediction is an important aspect of education that has gained signific...
In recent years, there has been evidence of a growing interest on the part of universities to know i...
The data in E-learning is generated as a result of the students' interactions during the learning se...
A comprehensive systematic study was carried out in order to identify various deep learning methods ...
Educational Data Mining and Deep learning play a crucial role in identifying academically weak stude...
Nowadays due to technological revolution huge amount of data is generated in every fields including ...
Acknowledgements: The authors highly express their gratitude to Asian University for Women, Chattogr...
Educational data generated through various platforms such as e-learning, e-admission systems, and au...
Educational Data Mining plays a crucial role in identifying academically weak students of an institu...
The present work has as objective to apply data mining techniques to develop a predictive model to f...
Large data transfers are getting more critical with the increasing volume of data in scientific comp...
Predicting students’ academic performance at an early stage of a semester is one of the most ...
Regression analysis, in statistic a modelling, is a set of statical processes that can be used to es...
This FYP project constitutes developing and evaluating deep learning models for 2 primary tasks – Re...