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Emergence of Hierarchy in Networked Endorsement Dynamics
arXiv - CS - Social and Information Networks Pub Date : 2020-07-08 , DOI: arxiv-2007.04448
Mari Kawakatsu, Philip S. Chodrow, Nicole Eikmeier, and Daniel B. Larremore

Many social and biological systems are characterized by enduring hierarchies, including those organized around prestige in academia, dominance in animal groups, and desirability in online dating. Despite their ubiquity, the general mechanisms that explain the creation and endurance of such hierarchies are not well understood. We introduce a generative model for the dynamics of hierarchies using time-varying networks in which new links are formed based on the preferences of nodes in the current network and old links are forgotten over time. The model produces a range of hierarchical structures, ranging from egalitarianism to bistable hierarchies, and we derive critical points that separate these regimes in the limit of long system memory. Distinctively, our model supports statistical inference, allowing for a principled comparison of generative mechanisms using data. We apply the model to study hierarchical structures in empirical data on hiring patterns among mathematicians, dominance relations among parakeets, and friendships among members of a fraternity, observing several persistent patterns as well as interpretable differences in the generative mechanisms favored by each. Our work contributes to the growing literature on statistically grounded models of time-varying networks.

中文翻译:

网络背书动态中层次结构的出现

许多社会和生物系统的特点是持久的等级制度,包括围绕学术界的声望、动物群体的主导地位以及在线约会的可取性组织的等级制度。尽管它们无处不在,但解释这种层次结构的创建和持久性的一般机制还不是很清楚。我们使用时变网络为层次结构的动态引入了一个生成模型,其中根据当前网络中节点的偏好形成新链接,并且随着时间的推移旧链接被遗忘。该模型产生了一系列层次结构,从平等主义到双稳态层次结构,我们推导出在长系统记忆的限制内将这些制度分开的临界点。与众不同的是,我们的模型支持统计推断,允许使用数据对生成机制进行原则性比较。我们应用该模型来研究数学家之间的招聘模式、长尾小鹦鹉之间的支配关系以及兄弟会成员之间的友谊的经验数据中的层次结构,观察几种持久模式以及每个人偏爱的生成机制的可解释差异。我们的工作有助于有关时变网络的统计基础模型的不断增长的文献。
更新日期:2020-07-24
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