社会网络中信念的进化

P. Paranamana, Pei Wang, Patrick Shafto
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引用次数: 0

摘要

一个社会的信仰进化是社会中几代人之间相互作用(水平传播)的产物(垂直传播)。研究人员分别研究了水平传播和垂直传播。在此基础上,我们提出了一个新的理论框架,该框架允许将马尔可夫链理论的工具应用于通过水平和垂直传播的信念进化分析。我们分析了三种情况:静态网络、随机变化网络和基于同质的动态网络。前两者假设网络结构与信仰无关,而后者假设人们倾向于与信仰相似的人交流。我们证明了在一般条件下,静态和随机变化的网络都收敛于所有个体之间的单一信念集,并给出了收敛速率。我们证明了基于同构的网络结构一般不收敛于所有人共享的单一信念集,并证明了不同极限信念数目的下界是初始信念的函数。最后,我们讨论了对先前理论和未来工作方向的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolution of beliefs in social networks
Evolution of beliefs of a society are a product of interactions between people (horizontal transmission) in the society over generations (vertical transmission). Researchers have studied both horizontal and vertical transmission separately. Extending prior work, we propose a new theoretical framework which allows application of tools from Markov chain theory to the analysis of belief evolution via horizontal and vertical transmission. We analyze three cases: static network, randomly changing network, and homophily-based dynamic network. Whereas the former two assume network structure is independent of beliefs, the latter assumes that people tend to communicate with those who have similar beliefs. We prove under general conditions that both static and randomly changing networks converge to a single set of beliefs among all individuals along with the rate of convergence. We prove that homophily-based network structures do not in general converge to a single set of beliefs shared by all and prove lower bounds on the number of different limiting beliefs as a function of initial beliefs. We conclude by discussing implications for prior theories and directions for future work.
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