Contextual and Possibilistic Reasoning for Coalition Formation
Antonis Bikakis, Patrice Caire

TL;DR
This paper presents a novel approach for coalition formation in multiagent systems that combines contextual reasoning, multi-context systems, and possibilistic reasoning to handle uncertainty and automate coalition selection.
Contribution
It introduces a systematic method for finding and evaluating coalitions using MCS tools and extends it with possibilistic reasoning to manage uncertainty in agent actions.
Findings
Effective coalition formation using MCS and contextual reasoning.
Incorporation of possibilistic reasoning improves handling of uncertainty.
Application demonstrated in a robotics example.
Abstract
In multiagent systems, agents often have to rely on other agents to reach their goals, for example when they lack a needed resource or do not have the capability to perform a required action. Agents therefore need to cooperate. Then, some of the questions raised are: Which agent(s) to cooperate with? What are the potential coalitions in which agents can achieve their goals? As the number of possibilities is potentially quite large, how to automate the process? And then, how to select the most appropriate coalition, taking into account the uncertainty in the agents' abilities to carry out certain tasks? In this article, we address the question of how to find and evaluate coalitions among agents in multiagent systems using MCS tools, while taking into consideration the uncertainty around the agents' actions. Our methodology is the following: We first compute the solution space for the…
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