具有连续或有序响应的聚类纵向二元数据的动态社会关系模型

Rebecca Pillinger, Fiona Steele, George Leckie, Jennifer Jenkins
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引用次数: 0

摘要

社会关系模型允许在分析个体或其他分析单元之间相互作用的聚类二元数据时识别集群、行动者、伙伴和关系效应。我们提出了该模型的扩展,该模型处理纵向数据并包含动态结构,其中响应可能是连续的,二进制的或有序的。这使得从时间波动和测量误差中分离出关系的影响,并调查个人是否在之前的观察中对伴侣的行为做出反应。我们通过应用加拿大的数据来激励和说明这个模型,这些数据是关于家庭中观察到的在冲突讨论任务中一起工作的个人。
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A dynamic social relations model for clustered longitudinal dyadic data with continuous or ordinal responses
Abstract Social relations models allow the identification of cluster, actor, partner, and relationship effects when analysing clustered dyadic data on interactions between individuals or other units of analysis. We propose an extension of this model which handles longitudinal data and incorporates dynamic structure, where the response may be continuous, binary, or ordinal. This allows the disentangling of the relationship effects from temporal fluctuation and measurement error and the investigation of whether individuals respond to their partner’s behaviour at the previous observation. We motivate and illustrate the model with an application to Canadian data on pairs of individuals within families observed working together on a conflict discussion task.
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