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Growing adaptive machines: combining development and learning in artificial neural networks

The pursuit of artificial intelligence has been a highly active domain of research for decades, yielding exciting scientific insights and productive new technologies. In terms of generating intelligence, however, this pursuit has yielded only limited success. This book explores the hypothesis that a...

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Detalles Bibliográficos
Autores principales: Kowaliw, Taras, Bredeche, Nicolas, Doursat, René
Lenguaje:eng
Publicado: Springer 2014
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-642-55337-0
http://cds.cern.ch/record/1742575
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author Kowaliw, Taras
Bredeche, Nicolas
Doursat, René
author_facet Kowaliw, Taras
Bredeche, Nicolas
Doursat, René
author_sort Kowaliw, Taras
collection CERN
description The pursuit of artificial intelligence has been a highly active domain of research for decades, yielding exciting scientific insights and productive new technologies. In terms of generating intelligence, however, this pursuit has yielded only limited success. This book explores the hypothesis that adaptive growth is a means of moving forward. By emulating the biological process of development, we can incorporate desirable characteristics of natural neural systems into engineered designs, and thus move closer towards the creation of brain-like systems. The particular focus is on how to design artificial neural networks for engineering tasks. The book consists of contributions from 18 researchers, ranging from detailed reviews of recent domains by senior scientists, to exciting new contributions representing the state of the art in machine learning research. The book begins with broad overviews of artificial neurogenesis and bio-inspired machine learning, suitable both as an introduction to the domains and as a reference for experts. Several contributions provide perspectives and future hypotheses on recent highly successful trains of research, including deep learning, the HyperNEAT model of developmental neural network design, and a simulation of the visual cortex. Other contributions cover recent advances in the design of bio-inspired artificial neural networks, including the creation of machines for classification, the behavioural control of virtual agents, the design of virtual multi-component robots and morphologies, and the creation of flexible intelligence. Throughout, the contributors share their vast expertise on the means and benefits of creating brain-like machines. This book is appropriate for advanced students and practitioners of artificial intelligence and machine learning.
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spelling cern-17425752021-04-21T20:56:43Zdoi:10.1007/978-3-642-55337-0http://cds.cern.ch/record/1742575engKowaliw, TarasBredeche, NicolasDoursat, RenéGrowing adaptive machines: combining development and learning in artificial neural networksEngineeringThe pursuit of artificial intelligence has been a highly active domain of research for decades, yielding exciting scientific insights and productive new technologies. In terms of generating intelligence, however, this pursuit has yielded only limited success. This book explores the hypothesis that adaptive growth is a means of moving forward. By emulating the biological process of development, we can incorporate desirable characteristics of natural neural systems into engineered designs, and thus move closer towards the creation of brain-like systems. The particular focus is on how to design artificial neural networks for engineering tasks. The book consists of contributions from 18 researchers, ranging from detailed reviews of recent domains by senior scientists, to exciting new contributions representing the state of the art in machine learning research. The book begins with broad overviews of artificial neurogenesis and bio-inspired machine learning, suitable both as an introduction to the domains and as a reference for experts. Several contributions provide perspectives and future hypotheses on recent highly successful trains of research, including deep learning, the HyperNEAT model of developmental neural network design, and a simulation of the visual cortex. Other contributions cover recent advances in the design of bio-inspired artificial neural networks, including the creation of machines for classification, the behavioural control of virtual agents, the design of virtual multi-component robots and morphologies, and the creation of flexible intelligence. Throughout, the contributors share their vast expertise on the means and benefits of creating brain-like machines. This book is appropriate for advanced students and practitioners of artificial intelligence and machine learning.Springeroai:cds.cern.ch:17425752014
spellingShingle Engineering
Kowaliw, Taras
Bredeche, Nicolas
Doursat, René
Growing adaptive machines: combining development and learning in artificial neural networks
title Growing adaptive machines: combining development and learning in artificial neural networks
title_full Growing adaptive machines: combining development and learning in artificial neural networks
title_fullStr Growing adaptive machines: combining development and learning in artificial neural networks
title_full_unstemmed Growing adaptive machines: combining development and learning in artificial neural networks
title_short Growing adaptive machines: combining development and learning in artificial neural networks
title_sort growing adaptive machines: combining development and learning in artificial neural networks
topic Engineering
url https://dx.doi.org/10.1007/978-3-642-55337-0
http://cds.cern.ch/record/1742575
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