Literature DB >> 21554114

Global adaptation in networks of selfish components: emergent associative memory at the system scale.

Richard A Watson1, Rob Mills, C L Buckley.   

Abstract

In some circumstances complex adaptive systems composed of numerous self-interested agents can self-organize into structures that enhance global adaptation, efficiency, or function. However, the general conditions for such an outcome are poorly understood and present a fundamental open question for domains as varied as ecology, sociology, economics, organismic biology, and technological infrastructure design. In contrast, sufficient conditions for artificial neural networks to form structures that perform collective computational processes such as associative memory/recall, classification, generalization, and optimization are well understood. Such global functions within a single agent or organism are not wholly surprising, since the mechanisms (e.g., Hebbian learning) that create these neural organizations may be selected for this purpose; but agents in a multi-agent system have no obvious reason to adhere to such a structuring protocol or produce such global behaviors when acting from individual self-interest. However, Hebbian learning is actually a very simple and fully distributed habituation or positive feedback principle. Here we show that when self-interested agents can modify how they are affected by other agents (e.g., when they can influence which other agents they interact with), then, in adapting these inter-agent relationships to maximize their own utility, they will necessarily alter them in a manner homologous with Hebbian learning. Multi-agent systems with adaptable relationships will thereby exhibit the same system-level behaviors as neural networks under Hebbian learning. For example, improved global efficiency in multi-agent systems can be explained by the inherent ability of associative memory to generalize by idealizing stored patterns and/or creating new combinations of subpatterns. Thus distributed multi-agent systems can spontaneously exhibit adaptive global behaviors in the same sense, and by the same mechanism, as with the organizational principles familiar in connectionist models of organismic learning.

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Year:  2011        PMID: 21554114     DOI: 10.1162/artl_a_00029

Source DB:  PubMed          Journal:  Artif Life        ISSN: 1064-5462            Impact factor:   0.667


  7 in total

1.  The evolution of phenotypic correlations and "developmental memory".

Authors:  Richard A Watson; Günter P Wagner; Mihaela Pavlicev; Daniel M Weinreich; Rob Mills
Journal:  Evolution       Date:  2014-02-01       Impact factor: 3.694

2.  Evolutionary transitions in learning and cognition.

Authors:  Simona Ginsburg; Eva Jablonka
Journal:  Philos Trans R Soc Lond B Biol Sci       Date:  2021-02-08       Impact factor: 6.237

3.  Unsupervised Learning Facilitates Neural Coordination Across the Functional Clusters of the C. elegans Connectome.

Authors:  Alejandro Morales; Tom Froese
Journal:  Front Robot AI       Date:  2020-04-02

4.  Self-Optimization in Continuous-Time Recurrent Neural Networks.

Authors:  Mario Zarco; Tom Froese
Journal:  Front Robot AI       Date:  2018-08-21

5.  Can government be self-organized? A mathematical model of the collective social organization of ancient Teotihuacan, central Mexico.

Authors:  Tom Froese; Carlos Gershenson; Linda R Manzanilla
Journal:  PLoS One       Date:  2014-10-10       Impact factor: 3.240

6.  What can ecosystems learn? Expanding evolutionary ecology with learning theory.

Authors:  Daniel A Power; Richard A Watson; Eörs Szathmáry; Rob Mills; Simon T Powers; C Patrick Doncaster; Błażej Czapp
Journal:  Biol Direct       Date:  2015-12-08       Impact factor: 4.540

7.  Evolutionary Connectionism: Algorithmic Principles Underlying the Evolution of Biological Organisation in Evo-Devo, Evo-Eco and Evolutionary Transitions.

Authors:  Richard A Watson; Rob Mills; C L Buckley; Kostas Kouvaris; Adam Jackson; Simon T Powers; Chris Cox; Simon Tudge; Adam Davies; Loizos Kounios; Daniel Power
Journal:  Evol Biol       Date:  2015-12-08       Impact factor: 3.119

  7 in total

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