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An online learning environment to teach artificial neural networks
Galvin, Gareth
This thesis presents a study to evaluate the benefits of the Internet as an environment for Computer Aided Learning (CAL). It comprises of research into, current and previous approaches to CAL, and presents an implementation of the authors own approach, with the MEng (Masters in Electronic Engineering) course of Artificial Neural Networks (ANN’s) as a template upon which to develop courseware. CAL strives to stimulate the user interactively so as to facilitate an optimum knowledge transfer between teacher and student. This project will show th a t the Internet offers such features as hypertext, graphics, sound and video, which when incorporated correctly can engage the student and provide a more intuitive learning experience. Artificial Neural Networks were chosen as a template subject because of its iterative nature which lends itself well to graphical analysis. This, combined with its computationally intensive algorithms, lends itself well to a CAL environment. An evaluation of the suitability of the Internet as a CAL environment is carried out based on the courseware developed and the feedback of those who actively used the package as part of their study program. Based on these results the author intends to show the benefits of such a medium within the education system.
Keyword(s): Education; Educational technology; Electronic engineering; Internet in education; Neural networks (Computer science); Study and teaching (Higher); Computer-assisted instruction
Publication Date:
Type: Other
Peer-Reviewed: Unknown
Language(s): English
Contributor(s): Ringwood, John
Institution: Dublin City University
Citation(s): Galvin, Gareth (1999) An online learning environment to teach artificial neural networks. Master of Engineering thesis, Dublin City University.
Publisher(s): Dublin City University. School of Electronic Engineering
File Format(s): application/pdf
Related Link(s):
First Indexed: 2013-07-31 05:29:38 Last Updated: 2019-02-09 06:33:04