Computing Networks: A General Framework to Contrast Neural and Swarm Cognitions
This paper presents the Computing Networks (CNs) framework. CNs are used to generalize neural and swarm architectures. Artificial neural networks, ant colony optimization, particle swarm optimization, and realistic biological models are used as examples of instantiations of CNs. The description of t...
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2010-06-01
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doaj-a722598ac5074d51a870a84d589cded22021-10-02T18:54:41ZengDe GruyterPaladyn: Journal of Behavioral Robotics2081-48362010-06-011214715310.2478/s13230-010-0015-zComputing Networks: A General Framework to Contrast Neural and Swarm CognitionsGershenson Carlos0Computer Sciences Department Instituto de Investigaciones en Matemáticas Aplicadas y en Sistemas Universidad Nacional Autónoma de Mexico Ciudad Universitaria, A.P. 20-726 01000 Mexico D.F. MexicoThis paper presents the Computing Networks (CNs) framework. CNs are used to generalize neural and swarm architectures. Artificial neural networks, ant colony optimization, particle swarm optimization, and realistic biological models are used as examples of instantiations of CNs. The description of these architectures as CNs allows their comparison. Their differences and similarities allow the identification of properties that enable neural and swarm architectures to perform complex computations and exhibit complex cognitive abilities. In this context, the most relevant characteristics of CNs are the existence multiple dynamical and functional scales. The relationship between multiple dynamical and functional scales with adaptation, cognition (of brains and swarms) and computation is discussed.https://doi.org/10.2478/s13230-010-0015-zcognitioncomputationneural architectureswarm architectureswarm cognitionmultiple scales |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Gershenson Carlos |
spellingShingle |
Gershenson Carlos Computing Networks: A General Framework to Contrast Neural and Swarm Cognitions Paladyn: Journal of Behavioral Robotics cognition computation neural architecture swarm architecture swarm cognition multiple scales |
author_facet |
Gershenson Carlos |
author_sort |
Gershenson Carlos |
title |
Computing Networks: A General Framework to Contrast Neural and Swarm Cognitions |
title_short |
Computing Networks: A General Framework to Contrast Neural and Swarm Cognitions |
title_full |
Computing Networks: A General Framework to Contrast Neural and Swarm Cognitions |
title_fullStr |
Computing Networks: A General Framework to Contrast Neural and Swarm Cognitions |
title_full_unstemmed |
Computing Networks: A General Framework to Contrast Neural and Swarm Cognitions |
title_sort |
computing networks: a general framework to contrast neural and swarm cognitions |
publisher |
De Gruyter |
series |
Paladyn: Journal of Behavioral Robotics |
issn |
2081-4836 |
publishDate |
2010-06-01 |
description |
This paper presents the Computing Networks (CNs) framework. CNs are used to generalize neural and swarm architectures. Artificial neural networks, ant colony optimization, particle swarm optimization, and realistic biological models are used as examples of instantiations of CNs. The description of these architectures as CNs allows their comparison. Their differences and similarities allow the identification of properties that enable neural and swarm architectures to perform complex computations and exhibit complex cognitive abilities. In this context, the most relevant characteristics of CNs are the existence multiple dynamical and functional scales. The relationship between multiple dynamical and functional scales with adaptation, cognition (of brains and swarms) and computation is discussed. |
topic |
cognition computation neural architecture swarm architecture swarm cognition multiple scales |
url |
https://doi.org/10.2478/s13230-010-0015-z |
work_keys_str_mv |
AT gershensoncarlos computingnetworksageneralframeworktocontrastneuralandswarmcognitions |
_version_ |
1716848590482046976 |