Title :
The design of an intelligent multi-agent system for supporting collaborative learning
Author :
Matazi, Issam ; Messoussi, Rochdi ; Bennane, Abdellah
Author_Institution :
Lab. Syst. of Telecommun. & Decision Ingenieering (LASTID), Ibn Tofail Univ., Kenitra, Morocco
Abstract :
Students who work in groups in groups encourage each other to ask questions, explain and justify their opinions, articulate their way of thinking, elaborate and reflect upon their knowledge. The benefits of collaborative learning platform are only achieved by active and well-functioning teams. But, can a human tutor support a large quantity of information stemming from a lot of learners interactions? Can the tutor send recommendations and remarks to each student? Is it possible for the tutor to intervene in the due time? Considering these constraints in terms of feasibility, tutor availability, and time latency, the purpose our project is to automate the human tutor tasks. In this paper we present the design of an intelligent multi-agents system that assists learners during collaborative E-learning. The assistance is done through the analysis of the cognitive and social indicators which determine the outcomes of interactions between learners to estimate their collaboration state. Based on these indicators, the system generates automatically some recommendations that are suitable for every learner. The automation of the tutor roles is achieved by an agent that uses fuzzy logic techniques for its machine learning.
Keywords :
fuzzy logic; groupware; intelligent tutoring systems; learning (artificial intelligence); multi-agent systems; cognitive indicator; collaboration state; collaborative e-learning platform; feasibility; fuzzy logic techniques; human tutor task automation; intelligent multiagent system design; learner interactions; machine learning; social indicator; student groups; time latency; tutor availability; Adaptation models; Cognition; Collaborative work; Fispro; artificial intelligence; collaborative learning; fuzzy logic; indicators; machine learning; multi-agent system;
Conference_Titel :
Intelligent Systems: Theories and Applications (SITA-14), 2014 9th International Conference on
Conference_Location :
Rabat
Print_ISBN :
978-1-4799-3566-6
DOI :
10.1109/SITA.2014.6847301