Information Flow in Finite Flocks
classification
❄️ cond-mat.stat-mech
keywords
flowinformationcanonicalfiniteflocksmodelnoisetransition
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We simulate the canonical Vicsek model and estimate the flow of information as a function of noise (the variability in the extent to which each animal aligns with its neighbours). We show that the global transfer entropy for finite flocks not only fails to peak near the phase transition, as demonstrated for the canonical 2D Ising model, but remains constant from the transition to very low noise values. This provides a foundation for future study regarding information flow in more complex models and real-world flocking data.
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