Observing the unwatchable: Integrating automated sensing, naturalistic observations and animal social network analysis in the age of big data
- PMID: 33020914
- DOI: 10.1111/1365-2656.13362
Observing the unwatchable: Integrating automated sensing, naturalistic observations and animal social network analysis in the age of big data
Abstract
In the 4.5 decades since Altmann (1974) published her seminal paper on the methods for the observational study of behaviour, automated detection and analysis of social interaction networks have fundamentally transformed the ways that ecologists study social behaviour. Methodological developments for collecting data remotely on social behaviour involve indirect inference of associations, direct recordings of interactions and machine vision. These recent technological advances are improving the scale and resolution with which we can dissect interactions among animals. They are also revealing new intricacies of animal social interactions at spatial and temporal resolutions as well as in ecological contexts that have been hidden from humans, making the unwatchable seeable. We first outline how these technological applications are permitting researchers to collect exquisitely detailed information with little observer bias. We further recognize new emerging challenges from these new reality-mining approaches. While technological advances in automating data collection and its analysis are moving at an unprecedented rate, we urge ecologists to thoughtfully combine these new tools with classic behavioural and ecological monitoring methods to place our understanding of animal social networks within fundamental biological contexts.
Keywords: RFID readers; animal social networks; automated-sensing technology; behavioural methods; disease transmission; global positioning systems; reality-mining approaches; social behaviour.
© 2020 British Ecological Society.
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