Unsupervised training of Multiobjective Agent Communication using Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8081
- @InProceedings{Mackin00,
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author = "Kenneth J. Mackin and Eiichiro Tazaki",
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title = "Unsupervised training of {M}ultiobjective {A}gent
{C}ommunication using {G}enetic {P}rogramming",
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booktitle = "Proceedings of the Fourth International Conference on
Knowledge-Based Intelligent Engineering Systems and
Allied Technology",
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volume = "2",
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pages = "738--741",
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address = "Brighton, UK",
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year = "2000",
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month = "30 " # aug # "-1 " # sep,
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publisher = "IEEE",
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keywords = "genetic algorithms, genetic programming, agent
communication protocols, agent group behaviour,
automatically defined function genetic programming,
multiagent systems, multiobjective agent communication,
multiobjective genetic programming, software agents,
software simulation, unsupervised learning, multi-agent
systems, unsupervised learning",
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URL = "http://www.lania.mx/~ccoello/EMOO/mackin00.pdf.gz",
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DOI = "doi:10.1109/KES.2000.884152",
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size = "4 pages",
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abstract = "Multiagent systems, in which independent software
agents interact with each other to achieve common
goals, complete distributed tasks concurrently under
autonomous control. Agent communication has been shown
to be an important factor in coordinating efficient
group behavior in agents. Most research on training or
evolving group behavior in multiagent systems used
predefined agent communication protocols. Designing
agent communication becomes a complex problem in
dynamic and large-scale systems. The problem is further
complicated in a multiobjective scenario. In order to
solve this problem, in our previous research we had
proposed a method applying genetic programming
techniques, in particular automatically defined
function genetic programming (ADF-GP), to allow agents
to autonomously learn effective agent communication
messaging. For this research we take this approach
further and combine multiobjective genetic programming
in order to adapt the system to a multiobjective
environment. In the proposed method separate agent
communication protocols are trained for each objective.
A software simulation of a multiagent transaction
system is used to observe the effectiveness of the
proposed method in multiobjective environments",
- }
Genetic Programming entries for
Kenneth J Mackin
Eiichiro Tazaki
Citations