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基于相似度的随机邻居的观点动态学。

Opinion dynamics with similarity-based random neighbors.

作者信息

Liu Qipeng, Wang Xiaofan

机构信息

Department of Automation, Shanghai Jiao Tong University, and Key Laboratory of System Control and Information Processing, Ministry of Education of China, Shanghai 200240, China.

出版信息

Sci Rep. 2013 Oct 17;3:2968. doi: 10.1038/srep02968.

Abstract

A typical assumption made in the existing opinion formation models is that two individuals can communicate with each other only if the distance between their opinions is less than a threshold called bound of confidence. However, in the real world it is quite possible that people may also have a few friends with quite different opinions. To model this situation, we propose a bounded confidence plus random selection model, in which each agent has several long-range neighbors outside the bound who are selected according to a similarity-based probability rule. We find that the opinions of all agents can reach a consensus in bounded time. We further consider the situation when agents ignore the bound of confidence and select all their neighbors randomly according to the similarity-based probability rule. We prove that in this scenario the whole group could also reach a consensus but in the probability sense.

摘要

现有观点形成模型中一个典型的假设是,只有当两个个体的观点距离小于一个称为置信界限的阈值时,他们才能相互交流。然而,在现实世界中,人们很可能也会有一些观点差异很大的朋友。为了模拟这种情况,我们提出了一种有界置信加随机选择模型,其中每个主体在界限之外有几个远程邻居,这些邻居是根据基于相似度的概率规则选择的。我们发现所有主体的观点可以在有限时间内达成共识。我们进一步考虑主体忽略置信界限并根据基于相似度的概率规则随机选择所有邻居的情况。我们证明,在这种情况下,整个群体也能达成共识,但只是在概率意义上。

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