Title
Towards a Self-Organising Mechanism for Learning Adaptive Decision-Making Rules
Abstract
Systems plunged into dynamic environments need evolving behaviours in order to self-adapt to these changes. These behaviours cannot be predetermined because it is impossible to list exhaustively all the situations the system may be faced with. Therefore, it becomes necessary to define real time algorithms that enable systems to autonomously adapt their behaviours to the current context. This paper focuses on behavioural rules learning. We propose, in that sense, a self-organisational approach based on local cooperative criteria that enable to discover triggering conditions of behavioural rules. Even if our approach intends to be generic, the principles and the evaluations have been defined in order to construct a system that enables the creation and the dynamic update of user profiles.
Year
DOI
Venue
2008
10.1109/WIIAT.2008.356
Web Intelligence/IAT Workshops
Keywords
Field
DocType
learning adaptive decision-making rules,user profile,local cooperative criterion,self-organising mechanism,real time algorithm,dynamic update,dynamic environment,behavioural rule,current context,self-organisational approach,pediatrics,real time,algorithm design and analysis,multiagent systems,learning artificial intelligence,multi agent system,multi agent systems,distributed algorithms,adaptive systems
Algorithm design,Computer science,Adaptive system,Multi-agent system,Distributed algorithm,Artificial intelligence,Self organisation,Machine learning
Conference
Citations 
PageRank 
References 
0
0.34
4
Authors
3
Name
Order
Citations
PageRank
Sylvain Lemouzy1122.78
Valérie Camps29017.42
Pierre Glize321534.04