Network regression models, where the outcome comprises the valued edge in a network and the predictors are actor or dyad-level covariates, are used extensively in the social and biological sciences. Valid inference relies on accurately modeling the residual dependencies among the relations. Frequently homogeneity assumptions are placed on the errors which are commonly incorrect and ignore critical, natural clustering of the actors. In this work, we present a novel regression modeling framework that models the errors as resulting from a community-based dependence structure and exploits the subsequent exchangeability properties of the error distribution to obtain parsimonious standard errors for regression parameters.
翻译:网络回归模型,其结果包括网络中的价值边缘,预测器是行为者或dyad级共变体,在社会和生物科学中广泛使用。有效的推论依赖于准确模拟关系中剩余依赖性。通常对行为者通常不正确的错误进行同质假设,忽视了关键和自然组合的行为者。在这项工作中,我们提出了一个新的回归模型框架,用以模拟社区依赖性结构造成的错误,并利用错误分布随后的互换性特性,以获得回归参数的偏差标准错误。