TY - JOUR
T1 - The research trends in recommender systems for e-learning
T2 - A systematic review of SSCI journal articles from 2014 to 2018
AU - Zhong, Jiemin
AU - Xie, Haoran
AU - Wang, Fu Lee
N1 - Publisher Copyright:
© 2019, Jiemin Zhong, Haoran Xie and Fu Lee Wang.
PY - 2019/11/14
Y1 - 2019/11/14
N2 - Purpose: A recommendation algorithm is typically applied to speculate on users’ preferences based on their behavioral characteristics. The purpose of this paper is to provide a systematic review of recommendation systems by collecting related journal articles from the last five years (i.e. from 2014 to 2018). This paper aims to study the correlations between recommendation technologies and e-learning systems. Design/methodology/approach: The paper reviews the relevant articles using five assessment aspects. A coding scheme was put forward that includes the following: the metrics for the e-learning system, the evaluation metrics for the recommendation algorithms, the recommendation filtering technology, the phases of the recommendation process and the learning outcomes of the system. Findings: The research indicates that most e-learning systems will adopt the adaptive mechanism as a primary metric, and accuracy is a vital evaluation indicator for recommendation algorithms. In existing e-learning recommender systems, the most common recommendation filtering technology is hybrid filtering. The information collection phase is an important process recognized by most studies. Finally, the learning outcomes of the recommender system can be achieved through two key indicators: affections and correlations. Originality/value: The recommendation technology works effectively in closing the gap between the information producer and the information consumer. This technology could help learners find the information they are interested in as well as send them a valuable message. The opportunities and challenges of the current study are discussed; the results of this study could provide a guideline for future research.
AB - Purpose: A recommendation algorithm is typically applied to speculate on users’ preferences based on their behavioral characteristics. The purpose of this paper is to provide a systematic review of recommendation systems by collecting related journal articles from the last five years (i.e. from 2014 to 2018). This paper aims to study the correlations between recommendation technologies and e-learning systems. Design/methodology/approach: The paper reviews the relevant articles using five assessment aspects. A coding scheme was put forward that includes the following: the metrics for the e-learning system, the evaluation metrics for the recommendation algorithms, the recommendation filtering technology, the phases of the recommendation process and the learning outcomes of the system. Findings: The research indicates that most e-learning systems will adopt the adaptive mechanism as a primary metric, and accuracy is a vital evaluation indicator for recommendation algorithms. In existing e-learning recommender systems, the most common recommendation filtering technology is hybrid filtering. The information collection phase is an important process recognized by most studies. Finally, the learning outcomes of the recommender system can be achieved through two key indicators: affections and correlations. Originality/value: The recommendation technology works effectively in closing the gap between the information producer and the information consumer. This technology could help learners find the information they are interested in as well as send them a valuable message. The opportunities and challenges of the current study are discussed; the results of this study could provide a guideline for future research.
KW - Assessment of e-learning recommender system
KW - Learning behaviour
KW - Literature review
KW - Recommendation technology
UR - http://www.scopus.com/inward/record.url?scp=85095697661&partnerID=8YFLogxK
U2 - 10.1108/AAOUJ-03-2019-0015
DO - 10.1108/AAOUJ-03-2019-0015
M3 - Article
AN - SCOPUS:85095697661
SN - 1858-3431
VL - 14
SP - 12
EP - 27
JO - Asian Association of Open Universities Journal
JF - Asian Association of Open Universities Journal
IS - 1
ER -