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Artificial intelligence in computer science and mathematics education

Azcona, David orcid logoORCID: 0000-0003-3693-7906 (2019) Artificial intelligence in computer science and mathematics education. PhD thesis, Dublin City University.

Abstract
In this thesis I examine how Artificial Intelligence (AI) techniques can help Computer Science students learn programming and mathematics skills more efficiently using algorithms and concepts such as Predictive Modelling, Machine Learning, Deep Learning, Representational Learning, Recommender Systems and Graph Theory. For that, I use Learning Analytics (LA) and Educational Data Mining (EDM) principles. In Learning Analytics one collects and analyses data about students and their contexts for purposes of understanding and improving their learning and the environments students interact with. Educational Data Mining applies Data Mining, Machine Learning and statistics to data captured during these learning processes. My central research question is how we can optimise the learning by students, of subjects like computer programming and mathematics in blended and online classrooms by mining and analysing data generated in these environments by the students. To validate the research question I have implemented several examples of monitoring student behaviour while learning, I have gathered various forms of student interaction data and combined it with demographics and student performance data (e.g. exam results) in order to test out different predictive models developed using a variety of AI and machine learning techniques. In these example environments I have used these models not only to predict outcome and exam performance but also to automatically generate feedback to students in a variety of ways, including recommending better programming techniques. My research question is explored by examining the performance of the AI techniques in helping to improve student learning.
Metadata
Item Type:Thesis (PhD)
Date of Award:November 2019
Refereed:No
Supervisor(s):Smeaton, Alan F. and Hsiao, Sharon
Subjects:Computer Science > Artificial intelligence
Computer Science > Machine learning
Social Sciences > Education
DCU Faculties and Centres:DCU Faculties and Schools > Faculty of Engineering and Computing > School of Computing
Research Institutes and Centres > INSIGHT Centre for Data Analytics
Use License:This item is licensed under a Creative Commons Attribution-NonCommercial-No Derivative Works 3.0 License. View License
Funders:Irish Research Council under project number GOIPG/2015/3497, The National Forum for the Enhancement of Teaching & Learning in Ireland, project number GOIPG/2015/3497, Fulbright Ireland, Science Foundation Ireland grant number 12/RC/2289 (Insight Centre for Data Analytics) i, Dublin City University’s School of Computing and Faculty of Engineering & Computing, Arizona State University Technology Office and School of Computing, Informatics & Decision Systems Engineering, Young European Research Universities Network
ID Code:23663
Deposited On:19 Nov 2019 12:10 by Alan Smeaton . Last Modified 04 Dec 2019 13:25
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