Coarse-grained statistics for attributing criticality to heterogeneous neural networks

Bibliographic Details
Main Authors: Philippides Andy, Corcoran Thomas, Nowotny Thomas
Format: Article
Language:English
Published: BMC 2011-07-01
Series:BMC Neuroscience
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author Philippides Andy
Corcoran Thomas
Nowotny Thomas
author_facet Philippides Andy
Corcoran Thomas
Nowotny Thomas
author_sort Philippides Andy
collection DOAJ
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institution Directory Open Access Journal
issn 1471-2202
language English
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publishDate 2011-07-01
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spelling doaj.art-9d3fee6905d04496a1bff9778a5ed6442022-12-22T02:54:25ZengBMCBMC Neuroscience1471-22022011-07-0112Suppl 1P23510.1186/1471-2202-12-S1-P235Coarse-grained statistics for attributing criticality to heterogeneous neural networksPhilippides AndyCorcoran ThomasNowotny Thomas
spellingShingle Philippides Andy
Corcoran Thomas
Nowotny Thomas
Coarse-grained statistics for attributing criticality to heterogeneous neural networks
BMC Neuroscience
title Coarse-grained statistics for attributing criticality to heterogeneous neural networks
title_full Coarse-grained statistics for attributing criticality to heterogeneous neural networks
title_fullStr Coarse-grained statistics for attributing criticality to heterogeneous neural networks
title_full_unstemmed Coarse-grained statistics for attributing criticality to heterogeneous neural networks
title_short Coarse-grained statistics for attributing criticality to heterogeneous neural networks
title_sort coarse grained statistics for attributing criticality to heterogeneous neural networks
work_keys_str_mv AT philippidesandy coarsegrainedstatisticsforattributingcriticalitytoheterogeneousneuralnetworks
AT corcoranthomas coarsegrainedstatisticsforattributingcriticalitytoheterogeneousneuralnetworks
AT nowotnythomas coarsegrainedstatisticsforattributingcriticalitytoheterogeneousneuralnetworks