Abstract:
To date, many researchers have proposed various methods to improve the learning ability in multiagent systems. However, most of these studies are not appropriate to more ...Show MoreMetadata
Abstract:
To date, many researchers have proposed various methods to improve the learning ability in multiagent systems. However, most of these studies are not appropriate to more complex multiagent learning problems because the state space of each learning agent grows exponentially in terms of the number of partners present in the environment. Modeling other learning agents present in the domain as part of the state of the environment is not a realistic approach. In this paper, we combine the advantages of the modular approach, fuzzy logic and the internal model in a single novel multiagent system architecture. The architecture is based on a fuzzy modular approach whose rule base is partitioned into several different modules. Each module deals with a particular agent in the environment and maps the input fuzzy sets to the action Q-values; these represent the state space of each learning module and the action space, respectively. Each module also uses an internal model table to estimate actions of the other agents. Finally, we investigate the integration of a parallel update method with the proposed architecture. Experimental results obtained on two different environments of a well-known pursuit domain show the effectiveness and robustness of the proposed multiagent architecture and learning approach.
Published in: IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics) ( Volume: 34, Issue: 2, April 2004)
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- IEEE Keywords
- Index Terms
- Internal Model ,
- Multi-agent Systems ,
- Modular Approach ,
- Environmental Conditions ,
- State Space ,
- Learning Problem ,
- Fuzzy Logic ,
- Fuzzy Set ,
- Learning Module ,
- Learning Agent ,
- Multi-agent Reinforcement Learning ,
- Architecture Approach ,
- Time Step ,
- Learning Process ,
- Number Of Steps ,
- Dynamic Environment ,
- Membership Function ,
- Lookup Table ,
- Function Approximation ,
- Rest Of This Section ,
- Markov Decision Process ,
- Continuous State Space ,
- First Set Of Experiments ,
- Modular Architecture ,
- Visual Environment ,
- Second Set Of Experiments ,
- Organization Of The Paper ,
- Autonomous Agents ,
- Q-learning Algorithm ,
- Policy Agencies
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Internal Model ,
- Multi-agent Systems ,
- Modular Approach ,
- Environmental Conditions ,
- State Space ,
- Learning Problem ,
- Fuzzy Logic ,
- Fuzzy Set ,
- Learning Module ,
- Learning Agent ,
- Multi-agent Reinforcement Learning ,
- Architecture Approach ,
- Time Step ,
- Learning Process ,
- Number Of Steps ,
- Dynamic Environment ,
- Membership Function ,
- Lookup Table ,
- Function Approximation ,
- Rest Of This Section ,
- Markov Decision Process ,
- Continuous State Space ,
- First Set Of Experiments ,
- Modular Architecture ,
- Visual Environment ,
- Second Set Of Experiments ,
- Organization Of The Paper ,
- Autonomous Agents ,
- Q-learning Algorithm ,
- Policy Agencies