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PhD opportunity: Understanding Causal Effects of Perturbations on Social Systems to Allow Prediction of Natural Populations’ Responses to Change

An opportunity for people interested in harnessing real-world network experiments to aid prediction of how natural social systems will respond to change and perturbations.

PhD opportunity: Understanding Causal Effects of Perturbations on Social Systems to Allow Prediction of Natural Populations’ Responses to Change

Lead Supervisor: Josh A Firth, School of Biology, University of Leeds

Description

Natural populations are often experience a variety of perturbations, ranging from extreme seasonal changes, weather events, disease outbreaks, or anthropogenic pressures. While much research has considered how these perturbations may influence the size and shape of a population (i.e. the demography), our understanding of the direct consequences of perturbations for the fine-scale structure of social connections between individuals (i.e. the social network) remains largely untested. Understanding – for instance – how individuals socially respond to the loss of their associates, the influx of new individuals, or changes in opportunities to interact with specific types of conspecifics, is challenging to examine. Further, the complexity of real-world social networks means that animal societies may react to perturbations in diverse ways, making it currently very challenging to predict outcomes.

This PhD project aims to establish a conceptual framework for predicting how perturbations might impact natural animal societies by using fine-scale, individual-level tracking data detailing social networks of wild populations experiencing rapid external changes. The research will adopt a two-pronged approach. Firstly, the project will use a wild bird population, great tits (Parus major), in Wytham Woods, Oxford, as a model experimental system for investigating the causal effects of perturbations. This population has been the subject of extensive research, with multiple experimental perturbations already conducted alongside continuous social network monitoring. By examining the outcome of these perturbations under a single framework, this research will aim to uncover how different perturbations causally affect social dynamics in natural settings, providing insights into the mechanisms that underpin social resilience and adaptability. Secondly, the project will draw upon a broader range of animal populations for which longitudinal social network tracking data are available during periods of population change. This will allow assessment of how natural, non-experimental perturbations -such as turnover of individuals – relates to changes in various social systems at a fundamental level. By comparing responses across diverse species and contexts, this project will examine whether any general rules govern how perturbations impact social networks in varied settings.

The aim of this project is to construct a framework and approach for elucidating the causal pathways linking perturbations to social network dynamics, and provide a foundation for allowing predictive realistic modeling of animal population responses under rapid externally-driven societal changes. By shedding new light on these relationships, the findings may contribute not only to behavioural ecology but also to interdisciplinary fields such as network science and sociology, highlighting the relevance of social dynamics in broader biological and ecological contexts. This project will primarily rely on previously collected datasets and experiments to address the above aims, through quantitative analysis and various computational approaches (for which training will be provided). Additionally, there is potential for further fieldwork to supplement existing datasets and explore new avenues of research if desired, both in experimental and observational studies.

Source and details: https://yes-dtn.ac.uk/research/understanding-causal-effects-of-perturbations-on-social-systems-to-allow-prediction-of-natural-populations-responses-to-change/

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