Title :
Analyzing Convergence in e-Learning Resource Filtering Based on ACO Techniques: A Case Study With Telecommunication Engineering Students
Author :
Muñoz-Organero, Mario ; Ramírez, Gustavo A. ; Merino, Pedro Muñoz ; Kloos, Carlos Delgado
Author_Institution :
Carlos III Univ. of Madrid, Leganes, Spain
Abstract :
The use of swarm intelligence techniques in e-learning scenarios provides a way to combine simple interactions of individual students to solve a more complex problem. After getting some data from the interactions of the first students with a central system, the use of these techniques converges to a solution that the rest of the students can successfully use. This paper uses a case study to analyze how fast swarm intelligence techniques converge when applied to solve the problem of e-learning resource filtering. Some modifications to traditional ant colony optimization (ACO) algorithms based on student filtering are also introduced in order to improve convergence.
Keywords :
further education; optimisation; student experiments; telecommunication engineering education; ACO techniques; ant colony optimization; convergence; e-learning resource filtering; swarm intelligence techniques; telecommunication engineering students; Algorithm design and analysis; Animals; Ant colony optimization; Birds; Collaboration; Convergence; Electronic learning; Engineering students; Filtering; Particle swarm optimization; ant colony optimization (ACO) techniques; convergence analysis in e-learning; educational technology; higher education; learning systems; resource filtering in e-learning; student experiments;
Journal_Title :
Education, IEEE Transactions on
DOI :
10.1109/TE.2009.2032168