Sammanfattning
The classical connectionist models are not well suited to working with data varying over time. According to this, temporal connectionist models have emerged and constitute a continuously growing research field. In this paper we present a novel supervised recurrent neural network architecture (SARASOM) based on the Associative Self-Organizing Map (A-SOM). The A-SOM is a variant of the Self-Organizing Map (SOM) that develops a representation of its input space as well as learns to associate its activity with an arbitrary number of additional inputs. In this context the A-SOM learns to associate its previous activity with a delay of one iteration. The performance of the SARASOM was evaluated and compared with the Elman network in a number of prediction tasks using sequences of letters (including some experiments with a reduced lexicon of 10 words). The results are very encouraging with SARASOM learning slightly better than the Elman network.
Originalspråk | Engelska |
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Sidor | 1207-1213 |
Antal sidor | 7 |
DOI | |
Status | Publicerad - 2011 |
Externt publicerad | Ja |
Evenemang | 2011 International Joint Conference on Neural Network, IJCNN 2011 - San Jose, CA, USA Varaktighet: 2011-juli-31 → 2011-aug.-05 |
Konferens
Konferens | 2011 International Joint Conference on Neural Network, IJCNN 2011 |
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Land/Territorium | USA |
Ort | San Jose, CA |
Period | 11-07-31 → 11-08-05 |