1 Learning Communication Strategies in Multiagent Systems
نویسندگان
چکیده
The issues that need to be addressed by research in multiagent systems include communication, coordination, coherence, uncertainty, organizational structure, planning, and knowledge representation. Our work addresses communication, coordination, and coherence, and, as we show in the following sections, our methodology allows the multiagent system to dynamically organize its structure and problem solving, thus making the issues of organizational structure and planning redundant.
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