Bibliometric Literature Review of Adaptive Learning Systems
Abstract
:1. Introduction
2. Multidimensional Scaling for Bibliometric Mapping
- Each object (e.g., Keyword, Author, or Reference) is represented as a point on the 2D map, with its coordinates on the Cartesian plane;
- The objects with co-occurrences are connected with a line;
- The thickness of the line represents the link strength, which is proportional to the similarity (or co-occurrence) between the objects;
- The distances between the objects are indicators of their dissimilarity.
2.1. Baseline Formulation
2.2. Objective Functions
2.3. Optimization Algorithms
Algorithm 1: Bibliometric map generation |
Data: Vector of Strings of the Bibliometric Objects Result: optimal positions on the Bibliometric Map Compute co-occurrences of the studied BO and maximum iterations ; Compute from (Equations (1) and (2)); Initialize randomly Assign ; |
3. The Studied Databases of Papers
3.1. The Scopus Query
3.2. Keywords’ Grouping
4. Results
4.1. Bibliometric Map of Keywords
- Adaptive learning;
- Personalized learning;
- Artificial intelligence;
- Higher education.
- Self-regulated learning;
- Affective computing;
- Machine learning;
- Distance learning;
- Student modeling,
- Motivation.
4.2. Current State and Emerging Insights
4.3. Map of References
5. Analysis of Top Cited Papers
5.1. Highly Cited Original Research Articles
5.2. Highly Cited Original Research Articles Published in the Last 5 Years
- Digital badges;
- A learner dashboard as the main feature and adaptive learning technology;
- Competency-based technology that adopts algorithm-based tutoring systems.
- What affordances make a learning environment smart?
- Which technologies are used in SLEs?
- In what pedagogical contexts are SLEs used?
- Different contexts (school vs. home) and circumstances (in-person vs. remote learning);
- Demographics;
- Confidence in using technology;
- Perspective on technical usefulness;
- Platform evaluation.
6. Discussion
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A. The Most Frequent Keywords
Initial String | Corrected String | Frequency | Initial String | Corrected String | Frequency |
---|---|---|---|---|---|
adaptive learning | adaptive learning | 1697 | feedback | NULL | 83 |
intelligent tutoring systems | intelligent tutoring system | 1518 | web 2.0 | NULL | 83 |
intelligent tutoring system | intelligent tutoring system | 865 | adaptivity | adaptive learning | 81 |
personalized learning | personalized learning | 673 | distance learning | NULL | 81 |
e-learning | NULL | 665 | knowledge tracing | knowledge management | 81 |
machine learning | machine learning | 282 | learner model | learner model | 80 |
learning | NULL | 279 | genetic algorithm | genetic algorithm | 78 |
learning analytics | learning analytics | 241 | intelligent tutoring | intelligent tutoring system | 78 |
neural network | artificial neural networks | 240 | adaptive learning systems | adaptive learning | 75 |
artificial intelligence | artificial intelligence | 236 | learning management system | learning management system | 71 |
personalization | personalized learning | 232 | learning objects | learning objects | 71 |
neural networks | artificial neural networks | 217 | lifelong learning | NULL | 71 |
ontology | ontologies | 208 | smart learning | intelligent tutoring system | 70 |
personal learning environment | personalized learning | 206 | smart learning environments | intelligent tutoring system | 70 |
mobile learning | NULL | 193 | affect | NULL | 69 |
personal learning environments | personalized learning | 171 | artificial neural networks | artificial neural networks | 69 |
online learning | NULL | 169 | problem solving | NULL | 68 |
adaptive learning rate | adaptive learning | 167 | serious games | NULL | 68 |
deep learning | artificial neural networks | 167 | adaptive | adaptive learning | 67 |
education | NULL | 163 | e-learning | NULL | 67 |
self-regulated learning | self-regulated learning | 163 | instructional design | NULL | 66 |
reinforcement learning | reinforcement learning | 158 | ontologies | ontologies | 65 |
collaborative learning | NULL | 155 | recommender systems | recommender systems | 65 |
learning style | learning style | 148 | virtual reality | NULL | 65 |
data mining | data mining | 145 | game-based learning | NULL | 64 |
higher education | NULL | 145 | metacognition | metacognition | 64 |
educational data mining | data mining | 141 | mooc | NULL | 64 |
learning styles | learning style | 141 | Bayesian networks | Bayesian networks | 61 |
student modeling | student modeling | 132 | adaptive hypermedia | adaptive learning | 60 |
adaptation | adaptive learning | 130 | item response theory | item response theory | 59 |
its | intelligent tutoring system | 117 | knowledge representation | knowledge management | 59 |
artificial neural network | artificial neural networks | 108 | clustering | clustering | 58 |
interactive learning environments | intelligent tutoring system | 106 | user modeling | user modeling | 58 |
semantic web | NULL | 106 | cloud computing | NULL | 57 |
adaptive control | adaptive learning | 105 | knowledge management | knowledge management | 57 |
motivation | motivation | 102 | personalised learning | personalized learning | 57 |
adaptive learning system | adaptive learning | 100 | bp neural network | artificial neural networks | 55 |
student model | student modeling | 100 | simulation | NULL | 55 |
affective computing | NULL | 99 | lms | learning management system | 54 |
natural language processing | natural language processing | 96 | ubiquitous learning | NULL | 54 |
evaluation | NULL | 95 | collaboration | NULL | 53 |
assessment | NULL | 94 | moocs | NULL | 53 |
blended learning | NULL | 93 | concept drift | concept drift | 52 |
big data | data mining | 89 | intelligent tutoring system (its) | intelligent tutoring system | 52 |
ple | personalized learning | 89 | m-learning | NULL | 52 |
gamification | NULL | 86 | prediction | NULL | 52 |
smart learning environment | intelligent tutoring system | 85 | augmented reality | NULL | 51 |
classification | classification | 84 | adaptive e-learning | adaptive learning | 50 |
fuzzy logic | NULL | 84 | collaborative filtering | recommender systems | 50 |
educational technology | NULL | 83 | engagement | NULL | 50 |
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Adaptive Educational Hypermedia System | OR | Adaptive Educational System | OR |
adaptive learning | OR | advanced learning technologies | OR |
intelligent learning platforms | OR | intelligent tutoring systems | OR |
AI-based learning systems | OR | personal learning environments | OR |
personalized learning | OR | smart learning environments | OR |
tutor-based expert systems | OR | web-based adaptive educational applications | |
AND | |||
education OR lesson | in | Title OR Keywords |
Artificial Intelligence | Adaptive Learning | Personalized Learning | Higher Education |
---|---|---|---|
self-regulated learning | ontologies | interactive learning environments | natural language processing |
affective computing | assessment | data mining | blended learning |
machine learning | learning analytics | ||
distance learning | educational technology | ||
student modeling | learning styles | ||
motivation |
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Koutsantonis, D.; Koutsantonis, K.; Bakas, N.P.; Plevris, V.; Langousis, A.; Chatzichristofis, S.A. Bibliometric Literature Review of Adaptive Learning Systems. Sustainability 2022, 14, 12684. https://doi.org/10.3390/su141912684
Koutsantonis D, Koutsantonis K, Bakas NP, Plevris V, Langousis A, Chatzichristofis SA. Bibliometric Literature Review of Adaptive Learning Systems. Sustainability. 2022; 14(19):12684. https://doi.org/10.3390/su141912684
Chicago/Turabian StyleKoutsantonis, Dionisios, Konstantinos Koutsantonis, Nikolaos P. Bakas, Vagelis Plevris, Andreas Langousis, and Savvas A. Chatzichristofis. 2022. "Bibliometric Literature Review of Adaptive Learning Systems" Sustainability 14, no. 19: 12684. https://doi.org/10.3390/su141912684
APA StyleKoutsantonis, D., Koutsantonis, K., Bakas, N. P., Plevris, V., Langousis, A., & Chatzichristofis, S. A. (2022). Bibliometric Literature Review of Adaptive Learning Systems. Sustainability, 14(19), 12684. https://doi.org/10.3390/su141912684