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CMU-CS-97-193
Computer Science Department
School of Computer Science, Carnegie Mellon University
CMU-CS-97-193
Multiagent Systems:
A Survey from a Machine Learning Perspective
Peter Stone, Manuela Veloso
December 1997
CMU-CS-97-193.ps
CMU-CS-97-193.ps.gz
Keywords: Multiagent systems, survey, machine learning, robotic
soccer, intelligent agents, pursuit domain, homogeneous agents, heterogeneous
agents, communicating agents
Distributed Artificial Intelligence (DAI) has existed as a subfield of
AI for less than two decades. DAI is concerned with systems that
consist of multiple independent entities that interact in a domain.
Traditionally, DAI has been divided into two sub-disciplines:
Distributed Problem Solving (DPS) focusses on the information
management aspects of systems with several branches working together
towards a common goal; Multiagent Systems (MAS) deals with behavior
management in collections of several independent entities, or agents.
This survey of MAS is intended to serve as an introduction to the
field and as an organizational framework. A series of increasingly
complex general multiagent scenarios are presented. For each
scenario, the issues that arise are described along with a sampling of
the techniques that exist to deal with them. The presented techniques
are not exhaustive, but they highlight how multiagent systems can be
and have been used to build complex systems. When options exist, the
techniques presented are biased towards machine learning approaches.
Additional opportunities for applying machine learning to MAS are
highlighted and robotic soccer is presented as an appropriate testbed
for MAS.
36 pages
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