Abstract

In studies of social behaviour, social bonds are usually inferred from rates of interaction or association. This approach has revealed many important insights into the proximate formation and ultimate function of animal social structures. However, it remains challenging to compare social structure between systems or time-points because extrinsic factors, such as sampling methodology, can also influence the observed rate of association. As a consequence of these methodological challenges, it is difficult to analyse how patterns of social association change with demographic processes, such as the death of key social partners. Here we develop and illustrate the use of binomial mixture models to quantitatively compare patterns of social association between networks. We then use this method to investigate how patterns of social preferences in killer whales respond to demographic change. Resident killer whales are bisexually philopatric, and both sexes stay in close association with their mother in adulthood. We show that mothers and daughters show reduced social association after the birth of the daughter’s first offspring, but not after the birth of an offspring to the mother. We also show that whales whose mother is dead associate more with their opposite sex siblings and with their grandmother than whales whose mother is alive. Our work demonstrates the utility of using mixture models to compare social preferences between networks and between species. We also highlight other potential uses of this method such as to identify strong social bonds in animal populations.Significance statementComparing patters of social associations between systems, or between the same systems at different times, is challenging due to the confounding effects of sampling and methodological differences. Here we present a method to allow social associations to be robustly classified and then compared between networks using binomial mixture models. We illustrate this method by showing how killer whales change their patterns of social association in response to the birth of calves and the death of their mother. We show that after the birth of her calf, females associate less with their mother. We also show that whales’ whose mother is dead associate more with their opposite sex siblings and grandmothers than whales’ whose mother is alive. This clearly demonstrates how this method can be used to examine fine scale temporal processes in animal social systems.

Highlights

  • In many group living animals, individuals do not socialise indiscriminately; rather, they have preferred and avoided associates (Hinde 1976; Whitehead 2008; Strickland et al 2017; Kappeler 2019)

  • We found a strong link between kinship and social association in resident killer whales: closer relatives tend to have associations classified in a higher component (Fig. 1)

  • We have developed the use of mixture models to compare social preferences over time or between different groups of individuals

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Summary

Introduction

In many group living animals, individuals do not socialise indiscriminately; rather, they have preferred and avoided associates (Hinde 1976; Whitehead 2008; Strickland et al 2017; Kappeler 2019). Social bonds are usually inferred from observed patterns of association or interaction. Observed rates of association can be affected by extrinsic factors other than social preference, which means it is methodologically difficult to quantify how social preferences change with time or in response to external events. These methodological challenges contribute to the current gap in our understanding of how individuals change their social preferences in response to the turnover of individuals in the population (Ilany and Akçay 2016; Shizuka and Johnson 2019). We present a new method to quantify social preferences and apply this to understand how a highly social marine mammal changes their social preference in response to the birth and death of key individuals

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