Publisher DOI: | 10.3233/FAIA210474 | Title: | A Knowledge-Model for AI-Driven Tutoring Systems | Language: | English | Authors: | Baumgart, Andreas Madany Mamlouk, Amir |
Editor: | Tropmann-Frick, Marina Jaakkola, Hannu Thalheim, Bernhard Kiyoki, Yasushi Yoshida, Naofumi |
Keywords: | Competence-Based Learning; Knowledge Concept; Ontology; Web- Service; Taxonomy of Knowledge; Web-Application | Issue Date: | 2021 | Publisher: | IOS Press | Part of Series: | Information Modelling and Knowledge Bases XXXIII | Journal or Series Name: | Frontiers in artificial intelligence and applications : FAIA | Volume: | 343 | Startpage: | 1 | Endpage: | 18 | Conference: | International Conference on Information Modelling and Knowledge Bases 2021 | Abstract: | A powerful new complement to traditional synchronous teaching is emerging: intelligent tutoring systems. The narrative: A learner interacts with a digital agent. The agent reviews, selects and proposes individually tailored educational resources and processes – i.e. a meaningful succession of instructions, tests or groupwork. The aim is to make personal tutored learning the new norm in higher education – especially in groups with heterogeneous educational backgrounds. The challenge: Today, there are no suitable data that allow computer-agents to learn how to take reasonable decisions. Available educational resources cannot be addressed by a computer logic because up to now they have not been tagged with machine-readable information at all or these have not been provided uniformly. And what’s worse: there are no agreed conceptual and structured models of what we understand by „learning“, how this model-to-be could be implemented in a computer algorithm and what those explicit decisions are that a tutoring system could take. So, a prerequisite for any future digital agent is to have a structured, computer-accessible model of “knowledge”. This model is required to qualify and quantify individual learning, to allow the association of resources as learning objects and to provide a base to operationalize learning for AI-based agents. We will suggest a conceptual model of “knowledge” based on a variant of Bloom’s taxonomy, transfer this concept of cognitive learning objectives into an ontology and describe an implementation into a web-based database application. The approach has been employed to model the basics of abstract knowledge in engineering mechanics at university-level. This paper addresses interdisciplinary aspects ranging from a teaching methodology, the taxonomy of knowledge in cognitive science, over a database-application for ontologies to an implementation of this model in a Grails service. We aim to deliver this web-based ontology, its user-interfaces and APIs into a research network that qualifies AI-based agents for competence-based tutoring. |
URI: | http://hdl.handle.net/20.500.12738/12877 | ISBN: | 978-1-64368-242-6 978-1-64368-243-3 |
ISSN: | 1879-8314 | Institute: | Department Maschinenbau und Produktion Fakultät Technik und Informatik |
Type: | Chapter/Article (Proceedings) |
Appears in Collections: | Publications without full text |
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