Spatial-Temporal Dynamics of High-Resolution Animal Social Networks: What Can We Learn from Domestic Animals?
Shi Chen, Amiyaal Ilany, Brad J. White, Michael W. Sanderson, and, Cristina Lanzas

TL;DR
This study uses high-resolution tracking to analyze cattle social networks, revealing spatial-temporal heterogeneity and key contact areas, which improve understanding of disease transmission pathways.
Contribution
It introduces high-resolution tracking of domestic animals to analyze dynamic social networks, uncovering heterogeneity missed by lower-resolution studies.
Findings
Cattle have strongest contacts around hay bunk during feeding.
Social network structure varies significantly across different areas and times.
High-resolution data reveals detailed contact patterns not observable at lower resolutions.
Abstract
Recent studies of animal social networks have significantly increased our understanding of animal behavior, social interactions, and many important ecological and epidemiological processes. However, most of the studies are at low temporal and spatial resolution due to the difficulty in recording accurate contact information. Domestic animals such as cattle have social behavior and serve as an excellent study system because their position can be explicitly and continuously tracked, allowing their social networks to be accurately constructed. We used radio-frequency tags to accurately track cattle position and analyze high-resolution cattle social networks. We tested the hypothesis of temporal stationarity and spatial homogeneity in these high-resolution networks and demonstrated substantial spatial-temporal heterogeneity during different daily time periods (feeding and non-feeding) and…
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