Abstract

The social environment is a pervasive influence on the ecological and evolutionary dynamics of animal populations. Recently, social network analysis has provided an increasingly powerful and diverse toolset to enable animal behaviour researchers to quantify the social environment of animals and the impact that it has on ecological and evolutionary processes. However, there is considerable scope for improving these methods further. We outline an approach specifically designed to model the formation of network links, exponential random graph models (ERGMs), which have great potential for modelling animal social structure. ERGMs are generative models that treat network topology as a response variable. This makes them ideal for answering questions related directly to how and why social associations or interactions occur, from the modelling of population level transmission, through within-group behavioural dynamics to social evolutionary processes. We discuss how ERGMs have been used to study animal behaviour previously, and how recent developments in the ERGM framework can increase the scope of their use further. We also highlight the strengths and weaknesses of this approach relative to more conventional methods, and provide some guidance on the situations and research areas in which they can be used appropriately. ERGMs have the potential to be an important part of an animal behaviour researcher's toolkit and fully integrating them into the field should enhance our ability to understand what shapes animal social interactions, and identify the underlying processes that lead to the social structure of animal populations.

Highlights

  • Contents lists available at ScienceDirectUnderstanding animal social structure: exponential random graph models in animal behaviour research

  • The social environment is a pervasive influence on the ecological and evolutionary dynamics of animal populations

  • We outline an approach designed to model the formation of network links, exponential random graph models (ERGMs), which have great potential for modelling animal social structure

Read more

Summary

Contents lists available at ScienceDirect

Understanding animal social structure: exponential random graph models in animal behaviour research. Randomization-based analyses have many strengths, especially in animal social network studies in which complex sampling issues often have to be controlled for (Farine & Whitehead, 2015; Farine, 2017) Using this approach controls for, rather than models, the biological processes, such as site use, that generate network structure. Some are generative models, with the underlying processes that govern interactions explicitly modelled, with the local network topology as a response variable (Cranmer, Leifeld, McClurg, & Rolfe, 2016; Silk, Croft, Delahay, Hodgson, Weber et al, 2017) This is extremely useful for researchers aiming to explain the social interactions that occur among individuals, and the observed structure of the entire network, a very common topic of research in animal behaviour This will give animal behaviour researchers a wider array of options than are currently in use

MODEL DESCRIPTION
Mutual The tendency for mutual ties in a directed network
Minimum geodesic distance
HOW HAVE ERGMS BEEN USED BEFORE?
ERGM ADVANTAGES AND DRAWBACKS
POTENTIAL FUTURE APPLICATIONS
Generating Uncertainty for Modelling Transmission Processes
Hypotheses Related to Social Dominance
Hypotheses Related to Differences in Network Structure
Hypotheses Related to Network Stability Over Time
OUTSTANDING ISSUES
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call