In statistical network analysis it is common to observe so called interaction data. Such data is characterized by actors forming the vertices and interacting along edges of the network, where edges are randomly formed and dissolved over the observation horizon. In addition covariates are observed and the goal is to model the impact of the covariates on the interactions. We distinguish two types of covariates: global, system-wide covariates (i.e. covariates taking the same value for all individuals, such as seasonality) and local, dyadic covariates modeling interactions between two individuals in the network. Existing continuous time network models are extended to allow for comparing a completely parametric model and a model that is parametric only in the local covariates but has a global non-parametric time component. This allows, for instance, to test whether global time dynamics can be explained by simple global covariates like weather, seasonality etc. The procedure is applied to a bike-sharing network by using weather and weekdays as global covariates and distances between the bike stations as local covariates.
翻译:在统计网络分析中,观测所谓的互动数据是常见的。这些数据的特征是行为者形成脊椎,在网络边缘进行互动,边缘是随机形成的,在观测地平线上溶解。此外,观测了共变数,目标是模拟共变数对相互作用的影响。我们区分了两种共变数:全球的全系统共变数(即共变数,对于所有个人来说,如季节性,其价值相同)和地方的双变数,对网络中两个个人之间的相互作用进行模拟。现有的连续时间网络模型被扩展,以便能够比较完全的参数模型和模型,该模型仅对本地的共变数具有参数性,但具有全球非参数的时间组成部分。例如,这允许测试全球时间动态是否可以用简单的全球共变数来解释,如天气、季节性等。程序适用于自行车共享网络,方法是将天气和周日作为全球共变数,将自行车站之间的距离作为本地共变数。