Experiences in the use of an adaptive intelligent system to enhance online learners' performance: a case study in Economics and Business courses

Abstract Several tools and resources have been developed in the past years to enhance the teaching and learning process. Most of them are focused on the process itself, but few focus on the assessment process to detect at-risk learners for later acting through feedback to support them to succeed and...

Full description

Bibliographic Details
Main Authors: Ana-Elena Guerrero-Roldán, M. Elena Rodríguez-González, David Bañeres, Amal Elasri-Ejjaberi, Pau Cortadas
Format: Article
Language:English
Published: SpringerOpen 2021-07-01
Series:International Journal of Educational Technology in Higher Education
Subjects:
Online Access:https://doi.org/10.1186/s41239-021-00271-0
id doaj-1a2943fd1df4426aa7b20f6eebf3cdc6
record_format Article
spelling doaj-1a2943fd1df4426aa7b20f6eebf3cdc62021-07-04T11:15:42ZengSpringerOpenInternational Journal of Educational Technology in Higher Education2365-94402021-07-0118112710.1186/s41239-021-00271-0Experiences in the use of an adaptive intelligent system to enhance online learners' performance: a case study in Economics and Business coursesAna-Elena Guerrero-Roldán0M. Elena Rodríguez-González1David Bañeres2Amal Elasri-Ejjaberi3Pau Cortadas4Faculty of Computer Science, Multimedia and Telecommunications Department, UOCFaculty of Computer Science, Multimedia and Telecommunications Department, UOCFaculty of Computer Science, Multimedia and Telecommunications Department, UOCFaculty of Economics and Business, UOCFaculty of Economics and Business, UOCAbstract Several tools and resources have been developed in the past years to enhance the teaching and learning process. Most of them are focused on the process itself, but few focus on the assessment process to detect at-risk learners for later acting through feedback to support them to succeed and pass the course. This research paper presents a case study using an adaptive system called Learning Intelligent System (LIS). The system includes an Early Warning System and tested in a fully online university to increase learners’ performance, reduce dropout, and ensure proper feedback to guide learners. LIS also aims to help teachers to detect critical cases to act on time with learners. The system has been tested in two first-year courses in the fully online BSc of Economics and Business at the Universitat Oberta de Catalunya. A total of 552 learners were participating in the case study. On the one hand, results show that performance is better than in previous semesters when using it. On the other hand, results show that learners' perception of effectiveness is higher, and learners are willing to continue using the system in the following semesters because it becomes beneficial for them.https://doi.org/10.1186/s41239-021-00271-0Online learningEarly warning systemFeedbackArtificial intelligencePerformanceDropout
collection DOAJ
language English
format Article
sources DOAJ
author Ana-Elena Guerrero-Roldán
M. Elena Rodríguez-González
David Bañeres
Amal Elasri-Ejjaberi
Pau Cortadas
spellingShingle Ana-Elena Guerrero-Roldán
M. Elena Rodríguez-González
David Bañeres
Amal Elasri-Ejjaberi
Pau Cortadas
Experiences in the use of an adaptive intelligent system to enhance online learners' performance: a case study in Economics and Business courses
International Journal of Educational Technology in Higher Education
Online learning
Early warning system
Feedback
Artificial intelligence
Performance
Dropout
author_facet Ana-Elena Guerrero-Roldán
M. Elena Rodríguez-González
David Bañeres
Amal Elasri-Ejjaberi
Pau Cortadas
author_sort Ana-Elena Guerrero-Roldán
title Experiences in the use of an adaptive intelligent system to enhance online learners' performance: a case study in Economics and Business courses
title_short Experiences in the use of an adaptive intelligent system to enhance online learners' performance: a case study in Economics and Business courses
title_full Experiences in the use of an adaptive intelligent system to enhance online learners' performance: a case study in Economics and Business courses
title_fullStr Experiences in the use of an adaptive intelligent system to enhance online learners' performance: a case study in Economics and Business courses
title_full_unstemmed Experiences in the use of an adaptive intelligent system to enhance online learners' performance: a case study in Economics and Business courses
title_sort experiences in the use of an adaptive intelligent system to enhance online learners' performance: a case study in economics and business courses
publisher SpringerOpen
series International Journal of Educational Technology in Higher Education
issn 2365-9440
publishDate 2021-07-01
description Abstract Several tools and resources have been developed in the past years to enhance the teaching and learning process. Most of them are focused on the process itself, but few focus on the assessment process to detect at-risk learners for later acting through feedback to support them to succeed and pass the course. This research paper presents a case study using an adaptive system called Learning Intelligent System (LIS). The system includes an Early Warning System and tested in a fully online university to increase learners’ performance, reduce dropout, and ensure proper feedback to guide learners. LIS also aims to help teachers to detect critical cases to act on time with learners. The system has been tested in two first-year courses in the fully online BSc of Economics and Business at the Universitat Oberta de Catalunya. A total of 552 learners were participating in the case study. On the one hand, results show that performance is better than in previous semesters when using it. On the other hand, results show that learners' perception of effectiveness is higher, and learners are willing to continue using the system in the following semesters because it becomes beneficial for them.
topic Online learning
Early warning system
Feedback
Artificial intelligence
Performance
Dropout
url https://doi.org/10.1186/s41239-021-00271-0
work_keys_str_mv AT anaelenaguerreroroldan experiencesintheuseofanadaptiveintelligentsystemtoenhanceonlinelearnersperformanceacasestudyineconomicsandbusinesscourses
AT melenarodriguezgonzalez experiencesintheuseofanadaptiveintelligentsystemtoenhanceonlinelearnersperformanceacasestudyineconomicsandbusinesscourses
AT davidbaneres experiencesintheuseofanadaptiveintelligentsystemtoenhanceonlinelearnersperformanceacasestudyineconomicsandbusinesscourses
AT amalelasriejjaberi experiencesintheuseofanadaptiveintelligentsystemtoenhanceonlinelearnersperformanceacasestudyineconomicsandbusinesscourses
AT paucortadas experiencesintheuseofanadaptiveintelligentsystemtoenhanceonlinelearnersperformanceacasestudyineconomicsandbusinesscourses
_version_ 1721320486033424384