SARASOM: a supervised architecture based on the recurrent associative SOM

David Gil, Jose Garcia-Rodriguez, Miguel Cazorla, Magnus Johnsson

Forskningsoutput: TidskriftsbidragArtikelPeer review

2 Citeringar (Scopus)

Sammanfattning

We present and evaluate a novel supervised recurrent neural network architecture, the SARASOM, based on the associative self-organizing map. The performance of the SARASOM is evaluated and compared with the Elman network as well as with a hidden Markov model (HMM) in a number of prediction tasks using sequences of letters, including some experiments with a reduced lexicon of 15 words. The results were very encouraging with the SARASOM learning better and performing with better accuracy than both the Elman network and the HMM.

OriginalspråkEngelska
Sidor (från-till)1103-1115
Antal sidor13
TidskriftNeural Computing and Applications
Volym26
Nummer5
DOI
StatusPublicerad - 2015-dec.-19
Externt publiceradJa

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  • Data- och informationsvetenskap (102)

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