On demand analysis of learning experiences for adaptive content retrieval in an e-learning environment

Understanding the learning experiences plays a vital role in identifying the suitable learning content for the learners. In this regard, the standards like the experience Application Programming Interface (xAPI) are of great help as they have the potential to record and represent the learning experi...

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Bibliographic Details
Main Authors: Raman Raghuveer, BK Tripathy
Format: Article
Language:English
Published: Italian e-Learning Association 2015-01-01
Series:Je-LKS : Journal of e-Learning and Knowledge Society
Subjects:
LO
Online Access:https://www.je-lks.org/ojs/index.php/Je-LKS_EN/article/view/947
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spelling doaj-ba66efa267f34372a371e1bbe5f71c4d2020-11-25T01:36:58ZengItalian e-Learning AssociationJe-LKS : Journal of e-Learning and Knowledge Society1826-62231971-88292015-01-0111110.20368/1971-8829/947On demand analysis of learning experiences for adaptive content retrieval in an e-learning environmentRaman Raghuveer0BK TripathyVellore Institute Of TechnologyUnderstanding the learning experiences plays a vital role in identifying the suitable learning content for the learners. In this regard, the standards like the experience Application Programming Interface (xAPI) are of great help as they have the potential to record and represent the learning experiences over the e-learning environment. As the learner requirements vary with their understanding of the topics over the learning cycle, there is an inherent need for dynamic derivation of the learner’s requirement at each learning instance. However, the limitation with experience statements generated through the xAPIs is that they fail to convey the detailed information about the Learning Object (LO) or the learner who used it. This paper addresses the issues with the representation of experience statements by proposing a multidimensional view of learning experiences such that they could be analyzed effectively. The Cross Dimensional Slicing (CDS) algorithm proposed in this paper has proved that the multidimensional representation of learning experiences greatly improves the effectiveness of analyzing them and thereby improving the precision of LOs being recommended. Also, the steep increase in the accuracy of recommendation of LOs over the different batches of learners considered for the study has reduced the number of slow learners of the learning environment altogether.https://www.je-lks.org/ojs/index.php/Je-LKS_EN/article/view/947learning experienceLOlearning objectsanalyzing the learnerTin Can
collection DOAJ
language English
format Article
sources DOAJ
author Raman Raghuveer
BK Tripathy
spellingShingle Raman Raghuveer
BK Tripathy
On demand analysis of learning experiences for adaptive content retrieval in an e-learning environment
Je-LKS : Journal of e-Learning and Knowledge Society
learning experience
LO
learning objects
analyzing the learner
Tin Can
author_facet Raman Raghuveer
BK Tripathy
author_sort Raman Raghuveer
title On demand analysis of learning experiences for adaptive content retrieval in an e-learning environment
title_short On demand analysis of learning experiences for adaptive content retrieval in an e-learning environment
title_full On demand analysis of learning experiences for adaptive content retrieval in an e-learning environment
title_fullStr On demand analysis of learning experiences for adaptive content retrieval in an e-learning environment
title_full_unstemmed On demand analysis of learning experiences for adaptive content retrieval in an e-learning environment
title_sort on demand analysis of learning experiences for adaptive content retrieval in an e-learning environment
publisher Italian e-Learning Association
series Je-LKS : Journal of e-Learning and Knowledge Society
issn 1826-6223
1971-8829
publishDate 2015-01-01
description Understanding the learning experiences plays a vital role in identifying the suitable learning content for the learners. In this regard, the standards like the experience Application Programming Interface (xAPI) are of great help as they have the potential to record and represent the learning experiences over the e-learning environment. As the learner requirements vary with their understanding of the topics over the learning cycle, there is an inherent need for dynamic derivation of the learner’s requirement at each learning instance. However, the limitation with experience statements generated through the xAPIs is that they fail to convey the detailed information about the Learning Object (LO) or the learner who used it. This paper addresses the issues with the representation of experience statements by proposing a multidimensional view of learning experiences such that they could be analyzed effectively. The Cross Dimensional Slicing (CDS) algorithm proposed in this paper has proved that the multidimensional representation of learning experiences greatly improves the effectiveness of analyzing them and thereby improving the precision of LOs being recommended. Also, the steep increase in the accuracy of recommendation of LOs over the different batches of learners considered for the study has reduced the number of slow learners of the learning environment altogether.
topic learning experience
LO
learning objects
analyzing the learner
Tin Can
url https://www.je-lks.org/ojs/index.php/Je-LKS_EN/article/view/947
work_keys_str_mv AT ramanraghuveer ondemandanalysisoflearningexperiencesforadaptivecontentretrievalinanelearningenvironment
AT bktripathy ondemandanalysisoflearningexperiencesforadaptivecontentretrievalinanelearningenvironment
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