A dynamic social relations model for clustered longitudinal dyadic data with continuous or ordinal responses

Author:

Pillinger Rebecca1,Steele Fiona2,Leckie George3,Jenkins Jennifer4

Affiliation:

1. Independent Researcher , Edinburgh , UK

2. Department of Statistics, London School of Economics & Political Science , London , UK

3. School of Education, University of Bristol , Bristol , UK

4. Applied Psychology and Human Development, University of Toronto , Toronto , Canada

Abstract

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.

Funder

Economic and Social Research Council

Canadian Institutes of Health Research

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Economics and Econometrics,Social Sciences (miscellaneous),Statistics and Probability

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