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Adaptive decision-making frameworks for multi-agent systems.
Thesis information
Author:
Martin, Cheryl Eliza
Advisor(s):
Barber, K. Suzanne
Degree:
Ph.D.
School:
The University of Texas at Austin.
Year:
2002.12.05Full Abstract
This dissertation shows that adding the capability of Adaptive Decision-Making Frameworks (ADMF) to a multi-agent system can result in significantly improved system performance across run-time situation changes. Specifically, ADMF can result in improved and more robust performance compared to the use of a single static decision-making framework. ADMF is an agent capability developed by this research that allows agents to adapt the decision-making frameworks in which they participate to fit their current situation. A decision-making framework (DMF) identifies a set of agents and specifies the set of interactions exercised by these agents as they determine how a goal or set of goals should be achieved. This research empirically shows that, for at least one multi-agent system, there is no one best decision-making framework for multiple agents across run-time situational changes. Further, this research justifies the implementation of ADMF by showing that allowing adaptation of decision-making frameworks to run-time variations in situation can result in improved overall system performance compared to static or random decision-making frameworks.
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