首页> 外文会议>Helenic Conference on Artificial Intelligence(AI),(SETN 2006); 20060518-20; Heraklion(GR) >A Distributed Branch-and-Bound Algorithm for Computing Optimal Coalition Structures
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A Distributed Branch-and-Bound Algorithm for Computing Optimal Coalition Structures

机译:一种计算最优联盟结构的分布式分支定界算法

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摘要

Coalition formation is an important area of research in multi-agent systems. Computing optimal coalition structures for a large number of agents is an important problem in coalition formation but has received little attention in the literature. Previous studies assume that each coalition value is known a priori. This assumption is impractical in real world settings. Furthermore, the problem of finding coalition values become intractable for even a relatively small number of agents. This work proposes a distributed branch-and-bound algorithm for computing optimal coalition structures in linear production domain, where each coalition value is not known a priori. The common goal of the agents is to maximize the system's profit. In our algorithm, agents perform two tasks: ⅰ) deliberate profitable coalitions, and ⅱ) cooperatively compute optimal coalition structures. We show that our algorithm outperforms exhaustive search in generating optimal coalition structure in terms of elapses time and number of coalition structures generated.
机译:联盟形成是多主体系统中重要的研究领域。计算大量代理人的最佳联盟结构是联盟形成中的重要问题,但在文献中很少受到关注。先前的研究假设每个联盟值都是先验的。这种假设在现实环境中是不切实际的。此外,即使对于相对少量的代理,查找联盟值的问题也变得棘手。这项工作提出了一种分布式分支定界算法,用于计算线性生产域中的最佳联盟结构,其中每个联盟值都不是先验信息。代理商的共同目标是使系统的利润最大化。在我们的算法中,代理执行两个任务:ⅰ)故意获利的联盟,以及ⅱ)协同计算最佳联盟结构。我们表明,在生成最佳联盟结构方面,我们的算法在经过时间和生成的联盟结构数量上均优于穷举搜索。

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