Novelty and imitation within the brain: a Darwinian neurodynamic approach to combinatorial problems

Abstract Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguistic structures, or causal explanations, is an essential component of intelligence. Is there any computational domain that is flexible enough to provide solutions to such diverse problems and ca...

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Main Authors: Dániel Czégel, Hamza Giaffar, Márton Csillag, Bálint Futó, Eörs Szathmáry
Format: Article
Language:English
Published: Nature Publishing Group 2021-06-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-91489-5
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spelling doaj-995c9ef45e754f91ab278c6102843e982021-06-20T11:37:04ZengNature Publishing GroupScientific Reports2045-23222021-06-0111111410.1038/s41598-021-91489-5Novelty and imitation within the brain: a Darwinian neurodynamic approach to combinatorial problemsDániel Czégel0Hamza Giaffar1Márton Csillag2Bálint Futó3Eörs Szathmáry4Institute of Evolution, Centre for Ecological ResearchCold Spring Harbor LaboratoryInstitute of Evolution, Centre for Ecological ResearchInstitute of Evolution, Centre for Ecological ResearchInstitute of Evolution, Centre for Ecological ResearchAbstract Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguistic structures, or causal explanations, is an essential component of intelligence. Is there any computational domain that is flexible enough to provide solutions to such diverse problems and can be robustly implemented over neural substrates? Based on previous accounts, we propose that a Darwinian process, operating over sequential cycles of imperfect copying and selection of neural informational patterns, is a promising candidate. Here we implement imperfect information copying through one reservoir computing unit teaching another. Teacher and learner roles are assigned dynamically based on evaluation of the readout signal. We demonstrate that the emerging Darwinian population of readout activity patterns is capable of maintaining and continually improving upon existing solutions over rugged combinatorial reward landscapes. We also demonstrate the existence of a sharp error threshold, a neural noise level beyond which information accumulated by an evolutionary process cannot be maintained. We introduce a novel analysis method, neural phylogenies, that displays the unfolding of the neural-evolutionary process.https://doi.org/10.1038/s41598-021-91489-5
collection DOAJ
language English
format Article
sources DOAJ
author Dániel Czégel
Hamza Giaffar
Márton Csillag
Bálint Futó
Eörs Szathmáry
spellingShingle Dániel Czégel
Hamza Giaffar
Márton Csillag
Bálint Futó
Eörs Szathmáry
Novelty and imitation within the brain: a Darwinian neurodynamic approach to combinatorial problems
Scientific Reports
author_facet Dániel Czégel
Hamza Giaffar
Márton Csillag
Bálint Futó
Eörs Szathmáry
author_sort Dániel Czégel
title Novelty and imitation within the brain: a Darwinian neurodynamic approach to combinatorial problems
title_short Novelty and imitation within the brain: a Darwinian neurodynamic approach to combinatorial problems
title_full Novelty and imitation within the brain: a Darwinian neurodynamic approach to combinatorial problems
title_fullStr Novelty and imitation within the brain: a Darwinian neurodynamic approach to combinatorial problems
title_full_unstemmed Novelty and imitation within the brain: a Darwinian neurodynamic approach to combinatorial problems
title_sort novelty and imitation within the brain: a darwinian neurodynamic approach to combinatorial problems
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-06-01
description Abstract Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguistic structures, or causal explanations, is an essential component of intelligence. Is there any computational domain that is flexible enough to provide solutions to such diverse problems and can be robustly implemented over neural substrates? Based on previous accounts, we propose that a Darwinian process, operating over sequential cycles of imperfect copying and selection of neural informational patterns, is a promising candidate. Here we implement imperfect information copying through one reservoir computing unit teaching another. Teacher and learner roles are assigned dynamically based on evaluation of the readout signal. We demonstrate that the emerging Darwinian population of readout activity patterns is capable of maintaining and continually improving upon existing solutions over rugged combinatorial reward landscapes. We also demonstrate the existence of a sharp error threshold, a neural noise level beyond which information accumulated by an evolutionary process cannot be maintained. We introduce a novel analysis method, neural phylogenies, that displays the unfolding of the neural-evolutionary process.
url https://doi.org/10.1038/s41598-021-91489-5
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