Exploring knowledge graphs for the identification of concept prerequisites
Abstract Learning basic concepts before complex ones is a natural form of learning. Automated systems and instructional designers evaluate and order concepts’ complexity to successfully generate and recommend or adapt learning paths. This paper addresses the specific challenge of accurately and adeq...
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Online Access: | https://doi.org/10.1186/s40561-019-0104-3 |
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doaj-ce161a35694742eea3b0e2f75a75568c2020-12-13T12:13:17ZengSpringerOpenSmart Learning Environments2196-70912019-12-016111810.1186/s40561-019-0104-3Exploring knowledge graphs for the identification of concept prerequisitesRubén Manrique0Bernardo Pereira1Olga Mariño2Systems and Computing Engineering Department, School of Engineering. Universidad de los Andes,Cra 1 No 18A - 12 (111711)College of Engineering and Computer Science. Australian National UniversitySystems and Computing Engineering Department, School of Engineering. Universidad de los Andes, Cra 1 No 18A - 12 (111711)Abstract Learning basic concepts before complex ones is a natural form of learning. Automated systems and instructional designers evaluate and order concepts’ complexity to successfully generate and recommend or adapt learning paths. This paper addresses the specific challenge of accurately and adequately identifying concept prerequisites using semantic web technologies for a basic understanding of a particular concept within the context of learning: given a target concept c, the goals are to (a) find candidate concepts that serve as possible prerequisite for c; and, (b) evaluate the prerequisite relation between the target and candidates concepts via a supervised learning model. Our four step approach consists of (i) an exploration of Knowledge Graphs in order to identify possible candidate concepts; (ii) the creation of a set of potential concepts; (iii) deployment of supervised learning model to evaluate a proposed list of prerequisite relationships regarding the target set; and, (iv) validation of our approaching using a ground truth of 80 concepts from different domains (with a precision varying between 76% and 96%).https://doi.org/10.1186/s40561-019-0104-3Concept prerequisite identificationKnowledge graphs |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Rubén Manrique Bernardo Pereira Olga Mariño |
spellingShingle |
Rubén Manrique Bernardo Pereira Olga Mariño Exploring knowledge graphs for the identification of concept prerequisites Smart Learning Environments Concept prerequisite identification Knowledge graphs |
author_facet |
Rubén Manrique Bernardo Pereira Olga Mariño |
author_sort |
Rubén Manrique |
title |
Exploring knowledge graphs for the identification of concept prerequisites |
title_short |
Exploring knowledge graphs for the identification of concept prerequisites |
title_full |
Exploring knowledge graphs for the identification of concept prerequisites |
title_fullStr |
Exploring knowledge graphs for the identification of concept prerequisites |
title_full_unstemmed |
Exploring knowledge graphs for the identification of concept prerequisites |
title_sort |
exploring knowledge graphs for the identification of concept prerequisites |
publisher |
SpringerOpen |
series |
Smart Learning Environments |
issn |
2196-7091 |
publishDate |
2019-12-01 |
description |
Abstract Learning basic concepts before complex ones is a natural form of learning. Automated systems and instructional designers evaluate and order concepts’ complexity to successfully generate and recommend or adapt learning paths. This paper addresses the specific challenge of accurately and adequately identifying concept prerequisites using semantic web technologies for a basic understanding of a particular concept within the context of learning: given a target concept c, the goals are to (a) find candidate concepts that serve as possible prerequisite for c; and, (b) evaluate the prerequisite relation between the target and candidates concepts via a supervised learning model. Our four step approach consists of (i) an exploration of Knowledge Graphs in order to identify possible candidate concepts; (ii) the creation of a set of potential concepts; (iii) deployment of supervised learning model to evaluate a proposed list of prerequisite relationships regarding the target set; and, (iv) validation of our approaching using a ground truth of 80 concepts from different domains (with a precision varying between 76% and 96%). |
topic |
Concept prerequisite identification Knowledge graphs |
url |
https://doi.org/10.1186/s40561-019-0104-3 |
work_keys_str_mv |
AT rubenmanrique exploringknowledgegraphsfortheidentificationofconceptprerequisites AT bernardopereira exploringknowledgegraphsfortheidentificationofconceptprerequisites AT olgamarino exploringknowledgegraphsfortheidentificationofconceptprerequisites |
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