在主体严格目标偏好下寻找最大成功联盟

Zhaopin Su, Guofu Zhang, Feng Yue, Jindong He, M. Li, Bin Li, X. Yao
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引用次数: 1

摘要

在多智能体系统中,联盟形成是实现共同目标的资源合作的基本形式。大多数现有的研究仍然集中在传统的假设上,即一个代理必须为所有目标贡献其资源,即使代理对目标根本不感兴趣。本文从理论和经验两方面研究了传统联盟资源博弈(crg)的自然延伸,其中每个代理都对目标具有不妥协的个性化偏好。具体地说,提出了一种新的具有严格目标偏好的CRGs模型,该模型中agent只愿意为符合自身利益集的目标贡献资源。重新研究了围绕成功联盟的基本决策问题的计算复杂度。结果表明,在这种严格的偏好方式下,这些问题是复杂而棘手的。为了找到最大的成功联盟,以减少可能的计算量或潜在的并行处理,提出了一种基于流网络的排气算法,称为FNetEA,以实现最优解。然后,为了更有效地解决问题,在遗传算法、二维解表示和启发式解修复的基础上,开发了一种名为2D- ha的混合算法来寻找近似最优解。通过大量的实验,2D-HA算法显示出突出的保证能力,即使在超大规模的空间中,也能在合理的时间内找到最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding the Largest Successful Coalition under the Strict Goal Preferences of Agents
Coalition formation has been a fundamental form of resource cooperation for achieving joint goals in multiagent systems. Most existing studies still focus on the traditional assumption that an agent has to contribute its resources to all the goals, even if the agent is not interested in the goal at all. In this article, a natural extension of the traditional coalitional resource games (CRGs) is studied from both theoretical and empirical perspectives, in which each agent has uncompromising, personalized preferences over goals. Specifically, a new CRGs model with agents’ strict preferences for goals is presented, in which an agent is willing to contribute its resources only to the goals that are in its own interest set. The computational complexity of the basic decision problems surrounding the successful coalition is reinvestigated. The results suggest that these problems in such a strict preference way are complex and intractable. To find the largest successful coalition for possible computation reduction or potential parallel processing, a flow-network–based exhaust algorithm, called FNetEA, is proposed to achieve the optimal solution. Then, to solve the problem more efficiently, a hybrid algorithm, named 2D-HA, is developed to find the approximately optimal solution on the basis of genetic algorithm, two-dimensional (2D) solution representation, and a heuristic for solution repairs. Through extensive experiments, the 2D-HA algorithm exhibits the prominent ability to provide reassurances that the optimal solution could be found within a reasonable period of time, even in a super-large-scale space.
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