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Active Learning in Recurrent Neural Networks Facilitated by an Hebb-like Learning Rule with Memory

/Active Learning in Recurrent Neural Networks Facilitated by an Hebb-like Learning Rule with Memory

Active Learning in Recurrent Neural Networks Facilitated by an Hebb-like Learning Rule with Memory

by F. Emmert-Streib
Reference:
Active Learning in Recurrent Neural Networks Facilitated by an Hebb-like Learning Rule with Memory (F. Emmert-Streib), In Neural Information Processing – Letters and Reviews, volume 9, 2005.
Bibtex Entry:
@Article{em_j5,
  AUTHOR     = {Emmert-Streib, F.},
  YEAR       = {2005},
  TITLE      = {Active Learning in Recurrent Neural Networks Facilitated by an Hebb-like Learning Rule with Memory},
  JOURNAL    = {Neural Information Processing - Letters and Reviews},
  volume     = {9},
  number     = {2},
  pages      = {31-40},
  month      = {},
  keywords   = {},
  summary    = {},
  supersedes = {D-<oldumber>},
  SEMNO      = {D-<newnumber>},
  PUF        = {Artikel optaget i tidsskrift},
  ID         = {Art2},
  OPTweb     = {http://bsrc.kaist.ac.kr/nip-lr/V09N02/V09N02P1-31-40.pdf},
  OPTCategory =  {BN, CB, CN, ML, O}
}

By | 2016-11-13T03:32:03+00:00 November 13th, 2016|Comments Off on Active Learning in Recurrent Neural Networks Facilitated by an Hebb-like Learning Rule with Memory

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