From sensing to emergent adaptations: Modelling the proximate architecture for decision-making
Authored by Sigrunn Eliassen, Jarl Giske, Christian Jorgensen, Bjorn Snorre Andersen
Date Published: 2016
DOI: 10.1016/j.ecolmodel.2015.09.001
Sponsors:
United States National Science Foundation (NSF)
Platforms:
NetLogo
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
During the past 50 years, evolutionary theory for animal behaviour has
branched into different methodological frameworks focussing on age-, state-, density-, and frequency-dependent processes. These approaches
have led to valuable insights in optimal responses, state dependent
choices, and behavioural strategies in social contexts. We argue that
time is ripe for an integration of these methodologies based on a
rigorous implementation of proximate mechanisms. We describe such a
modelling framework that is based on the architectural structures of
sensing and information processing, physiological and neurological
states, and behavioural control in animals. An individual-based model of
this decision architecture is embedded in a genetic algorithm that finds
evolutionary adaptations. This proximate architecture framework can be
utilized for modelling behavioural challenges in complex environments, for example how animals make behavioural decisions based on multiple
sources of information, or adapt to changing environments. The framework
represents the evolution of the proximate mechanisms that underlie
animal decision making, and it aligns with individual-based ecology by
emphasizing the role of local information, perception, and individual
behaviour. (C) 2015 The Authors. Published by Elsevier B.V. This is an
open access article under the CC BY-NC-ND license
(http://creativecommons.org/licenses/by-nc-nd/4.0/).
Tags
Genetic Algorithms
Population-dynamics
Natural-selection
Life-history
Evolutionary perspective
Sticklebacks gasterosteus-aculeatus
Animal personality
Maurolicus-muelleri
Scattering
layers
Stochastic
environments