Adaptation to criticality through organizational invariance in embodied agents

Abstract Many biological and cognitive systems do not operate deep within one or other regime of activity. Instead, they are poised at critical points located at phase transitions in their parameter space. The pervasiveness of criticality suggests that there may be general principles inducing this b...

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Main Authors: Miguel Aguilera, Manuel G. Bedia
Format: Article
Language:English
Published: Nature Publishing Group 2018-05-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-018-25925-4
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spelling doaj-40dbdf45191d4d109a4aa645dffd52622020-12-08T03:30:17ZengNature Publishing GroupScientific Reports2045-23222018-05-018111110.1038/s41598-018-25925-4Adaptation to criticality through organizational invariance in embodied agentsMiguel Aguilera0Manuel G. Bedia1Deptartment of Computer Science, University of ZaragozaDeptartment of Computer Science, University of ZaragozaAbstract Many biological and cognitive systems do not operate deep within one or other regime of activity. Instead, they are poised at critical points located at phase transitions in their parameter space. The pervasiveness of criticality suggests that there may be general principles inducing this behaviour, yet there is no well-founded theory for understanding how criticality is generated at a wide span of levels and contexts. In order to explore how criticality might emerge from general adaptive mechanisms, we propose a simple learning rule that maintains an internal organizational structure from a specific family of systems at criticality. We implement the mechanism in artificial embodied agents controlled by a neural network maintaining a correlation structure randomly sampled from an Ising model at critical temperature. Agents are evaluated in two classical reinforcement learning scenarios: the Mountain Car and the Acrobot double pendulum. In both cases the neural controller appears to reach a point of criticality, which coincides with a transition point between two regimes of the agent’s behaviour. These results suggest that adaptation to criticality could be used as a general adaptive mechanism in some circumstances, providing an alternative explanation for the pervasive presence of criticality in biological and cognitive systems.https://doi.org/10.1038/s41598-018-25925-4
collection DOAJ
language English
format Article
sources DOAJ
author Miguel Aguilera
Manuel G. Bedia
spellingShingle Miguel Aguilera
Manuel G. Bedia
Adaptation to criticality through organizational invariance in embodied agents
Scientific Reports
author_facet Miguel Aguilera
Manuel G. Bedia
author_sort Miguel Aguilera
title Adaptation to criticality through organizational invariance in embodied agents
title_short Adaptation to criticality through organizational invariance in embodied agents
title_full Adaptation to criticality through organizational invariance in embodied agents
title_fullStr Adaptation to criticality through organizational invariance in embodied agents
title_full_unstemmed Adaptation to criticality through organizational invariance in embodied agents
title_sort adaptation to criticality through organizational invariance in embodied agents
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2018-05-01
description Abstract Many biological and cognitive systems do not operate deep within one or other regime of activity. Instead, they are poised at critical points located at phase transitions in their parameter space. The pervasiveness of criticality suggests that there may be general principles inducing this behaviour, yet there is no well-founded theory for understanding how criticality is generated at a wide span of levels and contexts. In order to explore how criticality might emerge from general adaptive mechanisms, we propose a simple learning rule that maintains an internal organizational structure from a specific family of systems at criticality. We implement the mechanism in artificial embodied agents controlled by a neural network maintaining a correlation structure randomly sampled from an Ising model at critical temperature. Agents are evaluated in two classical reinforcement learning scenarios: the Mountain Car and the Acrobot double pendulum. In both cases the neural controller appears to reach a point of criticality, which coincides with a transition point between two regimes of the agent’s behaviour. These results suggest that adaptation to criticality could be used as a general adaptive mechanism in some circumstances, providing an alternative explanation for the pervasive presence of criticality in biological and cognitive systems.
url https://doi.org/10.1038/s41598-018-25925-4
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