A course agnostic approach to predicting student success from VLE log data using recurrent neural networks

Corrigan, Owen and Smeaton, Alan F. (2017) A course agnostic approach to predicting student success from VLE log data using recurrent neural networks.

Abstract

We describe a method of improving the accuracy of a learning analytics system through the application of a Recurrent Neural Network over all students in a University, regardless of course. Our target is to discover how well a student will do in a class given their interaction with a virtual learning environment. We show how this method performs well when we want to predict how well students will do, even if we do not have a model trained based on their specific course.

Information
Library
View Item