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Robust Coalition Structure Generation

机译:强大的联盟结构生成

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摘要

How to form effective coalitions is an important issue in multi-agent systems. Coalition Structure Generation (CSG) involves partitioning a set of agents into coalitions so that the social surplus (i.e. the sum of the rewards obtained by each coalition) is maximized. In many cases, one is interested in computing a partition of the set of agents which maximizes the social surplus, but is robust as well, which means that it is not required to recompute new coalitions if some agents break down. In this paper, the focus is laid on the Robust Coalition Structure Generation (RCSG) problem. A formal framework is defined and some decision and optimization problems for RCSG are pointed out. The computational complexity of RCSG is then identified. An algorithm for RCSG (called AmorCSG) is presented and evaluated on a number of benchmarks.
机译:在多智能体系统中,如何形成有效的联盟是一个重要的问题。联盟结构生成(CSG)涉及将一组特工划分为多个联盟,以使社会剩余(即每个联盟所获得的报酬之和)最大化。在许多情况下,人们对计算一组代理人的分区感兴趣,该分区可以最大化社会剩余,但也很健壮,这意味着如果某些代理人崩溃,则不需要重新计算新的联盟。本文将重点放在鲁棒联盟结构生成(RCSG)问题上。定义了一个正式的框架,并指出了RCSG的一些决策和优化问题。然后确定RCSG的计算复杂度。提出了用于RCSG的算法(称为AmorCSG),并在许多基准测试中对其进行了评估。

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