Abstract

Summary Null models are an important component of the social network analysis toolbox. However, their use in hypothesis testing is still not widespread. Furthermore, several different approaches for constructing null models exist, each with their relative strengths and weaknesses, and often testing different hypotheses.In this study, I highlight why null models are important for robust hypothesis testing in studies of animal social networks. Using simulated data containing a known observation bias, I test how different statistical tests and null models perform if such a bias was unknown.I show that permutations of the raw observational (or ‘pre‐network’) data consistently account for underlying structure in the generated social network, and thus can reduce both type I and type II error rates. However, permutations of pre‐network data remain relatively uncommon in animal social network analysis because they are challenging to implement for certain data types, particularly those from focal follows and GPS tracking.I explain simple routines that can easily be implemented across different types of data, and supply R code that applies each type of null model to the same simulated dataset. The R code can easily be modified to test hypotheses with empirical data. Widespread use of pre‐network data permutation methods will benefit researchers by facilitating robust hypothesis testing.

Highlights

  • With increasing interest in the study of animal social behaviour has come a greater reliance on statistical tools tailored to analysing social data

  • I explain simple routines that can be implemented across different types of data, and supply R code that applies each type of null model to the same simulated dataset

  • Null models are important because networks are based on non-independent observations of multiple individuals, and because small differences in how data are collected between individuals can generate patterns that appear as social structure

Read more

Summary

Introduction

With increasing interest in the study of animal social behaviour has come a greater reliance on statistical tools tailored to analysing social data. An important element in applying social network method to animal data has been the development of specialised hypothesis testing routines (Whitehead 1995, 1999; Bejder, Fletcher & Brager 1998; Lusseau, Whitehead & Gero 2008; Franz & Nunn 2009; Sundaresan, Fischhoff & Dushoff 2009; Farine 2014) One such method is null models, which are used to generate the patterns expected from the data in the absence of the process of interest (Croft et al 2011; Farine & Whitehead 2015). Social network studies that test hypotheses without such informed null models should be interpreted with caution

Objectives
Methods
Findings
Conclusion
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