Gossiping is a widespread social phenomenon that shapes relationships and information flow in communities. From a network theoretic point of view, gossiping can be seen as a higher-order interaction, as it involves at least two persons talking about a non-present third. The mechanism of gossiping is complex: it is most likely dynamic, as its intensity changes over time, and possibly viral, if a gossiping event induces future gossiping, such as a repetition or retaliation. We define covariates of interest for these effects and propose a relational hyperevent model to study and quantify these complex dynamics. We consider survey data collected yearly from 44 secondary schools in Hungary. No information is available about the exact timing of the events nor about the aggregate number of events within the yearly time interval. What is measured is whether at least one gossiping event has occurred in a given time interval. We extend inference for relational hyperevent models to the case of rightcensored interval-time data and show how flexible and efficient generalized additive models can be used for estimation of effects of interest. Our analysis on the school data illustrates how a model that accounts for linear, smooth and random effects can identify the social drivers of gossiping, while revealing complex temporal dynamics.
翻译:流言传播是一种普遍的社会现象,它塑造着社区中的关系和信息流动。从网络理论的角度看,流言可被视为一种高阶交互,因为它至少涉及两人谈论一个不在场的第三方。流言机制是复杂的:它很可能是动态的,其强度随时间变化;也可能是病毒式的,如果一次流言事件引发了未来的流言,例如重复或报复。我们为这些效应定义了感兴趣的协变量,并提出了一种关系超事件模型来研究和量化这些复杂动态。我们考虑了从匈牙利44所中学每年收集的调查数据。没有关于事件确切时间的信息,也没有关于年度时间间隔内事件总数的信息。测量的是在给定时间间隔内是否至少发生了一次流言事件。我们将关系超事件模型的推断扩展到右删失区间时间数据的情况,并展示了如何使用灵活高效的广义可加模型来估计感兴趣的效应。我们对学校数据的分析说明,一个考虑线性、平滑和随机效应的模型如何能够识别流言的社会驱动因素,同时揭示复杂的时间动态。