DocumentCode
2850969
Title
Genetic encoding of agent behavioral strategy
Author
Calderoni, Stéphane ; Marcenac, Pierre ; Courdier, Rimy
Author_Institution
IREMIA, Univ. de la Reunion, France
fYear
1998
fDate
3-7 Jul 1998
Firstpage
403
Lastpage
404
Abstract
The general framework tackled in this paper is the automatic generation of intelligent collective behaviors using genetic programming and reinforcement teaming. We define a behavior-based system relying on automatic design process using artificial evolution to synthesize high level behaviors for autonomous agents. Behavioral strategies are described by tree-based structures, and manipulated by generic evolving processes. Each strategy is dynamically evaluated during simulation, and is weighted by an adaptation function as a quality factor that reflects its relevance as good solution for the learning task. It is computed using heterogeneous reinforcement techniques associating immediate reinforcements and delayed reinforcements as dynamic progress estimators
Keywords
cooperative systems; genetic algorithms; software agents; tree data structures; agent behavioral strategy; artificial evolution; behavior-based system; delayed reinforcements; dynamic progress estimators; generic evolving processes; genetic encoding; genetic programming; heterogeneous reinforcement techniques; high level behaviors; immediate reinforcements; intelligent collective behaviors; reinforcement teaming; tree-based structures; Actuators; Artificial intelligence; Autonomous agents; Computational modeling; Delay estimation; Encoding; Genetic programming; Learning; Process design; Q factor;
fLanguage
English
Publisher
ieee
Conference_Titel
Multi Agent Systems, 1998. Proceedings. International Conference on
Conference_Location
Paris
Print_ISBN
0-8186-8500-X
Type
conf
DOI
10.1109/ICMAS.1998.699234
Filename
699234
Link To Document