Optimizing Dynamic Multi-Agent Performance in E-Learning Environment
24
TL;DR: A dynamic multi-agent system using particle swarm optimization for the e-learning systems is proposed and demonstrates the effectiveness of the proposed system in providing near-optimal solutions in considerably less computational time.
read more
Abstract: The main objective of e-learning systems is to improve the student learning performance and satisfaction. This can be achieved by providing a personalized learning experience that identifies and satisfies the individual learner’s requirements and abilities. The performance of the e-learning systems can be significantly improved by exploiting dynamic self-learning capabilities that rapidly adapts to prior user interactions within the system and the continuous changes in the environment. In this paper, a dynamic multi-agent system using particle swarm optimization for the e-learning systems is proposed. The system incorporates five agents that take into consideration the variations in the capabilities among the different users. First, the project clustering agent is used to cluster a set of learning resources/projects into similar groups. Second, the student clustering agent (SCA) groups students according to their preferences and abilities. Third, the student-project matching agent is used to map each learner’s group to a suitable project or particular learning resources according to specific design criteria. Fourth, the student-student matching agent is designed to perform the efficient mapping between different students. Finally, the dynamic SCA (DSCA) is employed to continuously track and analyze the student’s behavior within the system such as changes in knowledge and skill levels. Consequently, the DSCA adapts the e-learning environments to accommodate these variations. Experimental results demonstrate the effectiveness of the proposed system in providing near-optimal solutions in considerably less computational time.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
A Distributed Control Method for Urban Networks Using Multi-Agent Reinforcement Learning Based on Regional Mixed Strategy Nash-Equilibrium
TL;DR: A distributed control method for preventing disturbance-based urban network traffic congestion by integrating Multi-Agent Reinforcement Learning (MARL) and regional Mixed Strategy Nash-Equilibrium (MSNE) is designed.
Positive Artificial Intelligence in Education (P-AIED): A Roadmap
Ig Ibert Bittencourt,Geiser Chalco,Jário Santos,Sheyla Christine Santos Fernandes,Jesana Silva,Naricla Batista,Claudio Simon Hutz,Seiji Isotani +7 more
TL;DR: A bibliometric analysis of positive psychology and artificial intelligence in education was made as the so-called Positive Artificial Intelligence in Education (P-AIED), and the main conclusions were the high number of institutions and researchers with related publications indicate a new trend for the community of AIED.
16
Automated reasoning of learners’ cognitive states using classification analysis
Christos Troussas,Akrivi Krouska,Filippos Giannakas,Cleo Sgouropoulou,Ioannis Voyiatzis +4 more
- 20 Nov 2020
TL;DR: In this article, a framework for the automated reasoning of the students' cognitive states and function is presented, where the cognitive states are depicted using the Revised Bloom Taxonomy, representing a continuum of increasing cognitive complexity.
7
Research Trends in Adaptive Online Learning: Systematic Literature Review (2011–2020)
TL;DR: A comprehensive and up-to-date review that looks at the aspects of adaptive online learning systems in terms of the learner characteristics being modelled, domain model, adaptation model, the various techniques used to achieve the various tasks in those models and the impact the adaptive onlinelearning has on learning.
6
Optimized RB-RNN: Development of hybrid deep learning for analyzing student’s behaviours in online-learning using brain waves and chatbots
S. Sageengrana,S. Selvakumar,S. Srinivasan +2 more
TL;DR: This study develops a hybrid deep learning model, Optimized RB-RNN, to analyze student behavior in online learning by integrating brain waves and chatbot interactions, achieving 95% accuracy and 93% F1-score with optimized feature selection using O-FFPO.
5
References
•Book
An Introduction to MultiAgent Systems
Michael Wooldridge
- 12 Jun 2002
TL;DR: A multi-agent system is a distributed computing system with autonomous interacting intelligent agents that coordinate their actions so as to achieve its goal(s) jointly or competitively.
5.4K
Comparing inertia weights and constriction factors in particle swarm optimization
Russell C. Eberhart,Yuhui Shi +1 more
- 16 Jul 2000
TL;DR: It is concluded that the best approach is to use the constriction factor while limiting the maximum velocity Vmax to the dynamic range of the variable Xmax on each dimension.
3.3K
Adaptive Particle Swarm Optimization
Zhi-Hui Zhan,Jun Zhang,Yun Li,Henry Shu-Hung Chung +3 more
- 01 Dec 2009
TL;DR: An adaptive particle swarm optimization that features better search efficiency than classical particle Swarm optimization (PSO) is presented and can perform a global search over the entire search space with faster convergence speed.
Educational data mining: A survey from 1995 to 2005
TL;DR: This paper surveys the application of data mining to traditional educational systems, particular web- based courses, well-known learning content management systems, and adaptive and intelligent web-based educational systems.
1.6K
K-Means-Type Algorithms: A Generalized Convergence Theorem and Characterization of Local Optimality
TL;DR: It is shown that under certain conditions the K-means algorithm may fail to converge to a local minimum, and that it converges under differentiability conditions to a Kuhn-Tucker point.
1.3K