Chaos in collective health: Fractal dynamics of social learning
Authored by Christopher Keane
Date Published: 2016
DOI: 10.1016/j.jtbi.2016.08.039
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Benoit
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Abstract
Physiology often exhibits non-linear, fractal patterns of adaptation. I
show that such patterns of adaptation also characterize collective
health behavior in a model of collective health protection in which
individuals use highest payoff biased social learning to decide whether
or not to protect against a spreading disease, but benefits of health
are shared locally. This model results in collectives of protectors with
an exponential distribution of sizes, smaller ones being much more
likely. This distribution of protecting collectives, in turn, results in
incidence patterns often seen in infectious disease which, although they
seem to fluctuate randomly, actually have an underlying order, a fractal
time trend pattern. The time trace of infection incidence shows a
self-similarity coefficient consistent with a fractal distribution and
anti-persistence, reflecting the negative feedback created by health
protective behavior responding to disease, when the benefit of health is
high enough to stimulate health protection. When the benefit of health
is too low to support any health protection, the self-similarity
coefficient shows high persistence, reflecting positive feedback
resulting the unmitigated spread of disease. Thus the self-similarity
coefficient closely corresponds to the level of protection, demonstrating that what might otherwise be regarded as ``noise{''} in
incidence actually reflects the fact that protecting collectives form
when the spreading disease is present locally but drop protection when
disease subsides locally, mitigating disease intermittently. These
results hold not only in a deterministic version of the model in a
regular lattice network, but also in small-world networks with
stochasticity in infection and efficacy of protection. The resulting
non-linear and chaotic patterns of behavior and disease cannot be
explained by traditional epidemiological methods but a simple
agent-based model is sufficient to produce these results. (C) 2016
Elsevier Ltd. All rights reserved.
Tags
Epidemiology
Performance
networks
transmission
Vaccination
Infectious-diseases
Transtheoretical model
Behavior-change
Hand
hygiene
Attractors