[Social] Allostasis: Or, How I Learned To Stop Worrying and Love The Noise
Imran Khan

TL;DR
This paper introduces a computational model of social allostasis, demonstrating how systems can proactively use environmental and social noise for adaptive regulation, leading to enhanced robustness in dynamic environments.
Contribution
It formulates a novel bio-inspired model of social allostasis using signal transducers, tested in agent-based simulations to show improved adaptability over traditional homeostatic systems.
Findings
Allostatic regulation enables better adaptation to environmental noise.
Social allostasis improves agent viability in dynamic settings.
Proactive regulation outperforms reactive homeostasis.
Abstract
The notion of homeostasis typically conceptualises biological and artificial systems as maintaining stability by resisting deviations caused by environmental and social perturbations. In contrast, (social) allostasis proposes that these systems can proactively leverage these very perturbations to reconfigure their regulatory parameters in anticipation of environmental demands, aligning with von Foerster's ``order through noise'' principle. This paper formulates a computational model of allostatic and social allostatic regulation that employs biophysiologically inspired signal transducers, analogous to hormones like cortisol and oxytocin, to encode information from both the environment and social interactions, which mediate this dynamic reconfiguration. The models are tested in a small society of ``animats'' across several dynamic environments, using an agent-based model. The results…
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Taxonomy
TopicsEvolutionary Game Theory and Cooperation · Embodied and Extended Cognition · Language and cultural evolution
