A Smooth Bounded Confidence Model Maintaining Clustering Phenomenon

Yu Xing, H. Fang
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Abstract

In this paper, we propose a stochastic bounded confidence model. At every time slot, each individual receives an external social signal which is the average of opinions of its neighbors. Then agents compare the signals with their own personal biases which are defined as the initial values that ones hold. With positive probability, the agents either accept the opinion or persuade themselves with the help of personal prejudices. The probability of acceptance is reversely proportional to the opinion discrepancy between the signal and the bias. The model is modified as a continuous opinions discrete actions (CODA) model and thus is a Markov chain taking values on a finite state space. It is verified that the chain is aperiodic and finally converges in distribution to some invariant measure. The classification of states shows that the influences of distant opinions will boost consensus while the presence of personal biases promote clustering. The model also combines DeGroot model with Friedkin-Johnson model as well, by using a bounded confidence framework.
保持聚类现象的光滑有界置信模型
本文提出了一个随机有界置信模型。在每个时隙,每个个体都会接收到一个外部社会信号,这是其邻居意见的平均值。然后,代理将这些信号与他们自己的个人偏见进行比较,这些偏见被定义为一个人持有的初始值。在正概率情况下,代理人要么接受意见,要么借助个人偏见说服自己。接受的概率与信号和偏见之间的意见差异成反比。该模型被修改为连续意见离散动作(CODA)模型,因此是一个在有限状态空间上取值的马尔可夫链。证明了该链是非周期的,并最终在分布上收敛于某不变测度。对状态的分类表明,远距离意见的影响会促进共识,而个人偏见的存在会促进聚类。该模型采用有界置信度框架,将DeGroot模型与Friedkin-Johnson模型相结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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