复杂网络中影响权传播的范数涌现

Ryosuke Shibusawa, T. Sugawara
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引用次数: 11

摘要

我们提出了一个基于影响的聚合学习框架,该框架促进了复杂网络中社会规范的出现,并研究了规范如何通过协调博弈中反复的局部互动学习而收敛。在社会中,人们不仅决定通过交换信息来协调他们的行为,而且还决定以规范为基础来协调他们的行为,这些规范往往是在没有中央权威的情况下从相互作用中单独产生的。在多智能体系统的研究中,规范协调受到了广泛的关注。此外,由于智能体经常作为人类的代表工作,它们应该有关于如何与他人互动和吸收不同意见的“心理”模型。因为规范只有在所有或大多数主体都有相同的规范,并且他们可以期望其他人会遵循的情况下才有意义,所以通过学习与代理社会中的局部和个体互动来研究规范出现的机制是很重要的。我们的规范学习方法借鉴了意见聚合过程,同时考虑了在紧密协调的人类社区中当地意见的影响。我们进行了实验,展示了我们的学习框架如何在许多复杂的代理网络中促进规范的传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Norm Emergence via Influential Weight Propagation in Complex Networks
We propose an influence-based aggregative learning framework that facilitates the emergence of social norms in complex networks and investigate how a norm converges by learning through iterated local interactions in a coordination game. In society, humans decide to coordinate their behavior not only by exchanging information but also on the basis of norms that are often individually derived from interactions without a centralized authority. Coordination using norms has received much attention in studies of multi-agent systems. In addition, because agents often work as delegates of humans, they should have "mental" models about how to interact with others and incorporate differences of opinion. Because norms make sense only when all or most agents have the same one and they can expect that others will follow, it is important to investigate the mechanism of norm emergence through learning with local and individual interactions in agent society. Our method of norm learning borrows from the opinion aggregation process while taking into account the influence of local opinions in tightly coordinated human communities. We conducted experiments showing how our learning framework facilitates propagation of norms in a number of complex agent networks.
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