Corpus ID: 15467150

The''echo state''approach to analysing and training recurrent neural networks

@inproceedings{Jaeger2001TheechoST,
  title={The''echo state''approach to analysing and training recurrent neural networks},
  author={H. Jaeger},
  year={2001}
}
  • H. Jaeger
  • Published 2001
  • Computer Science
  • The report introduces a constructive learning algorithm for recurrent neural networks, which modifies only the weights to output units in order to achieve the learning task. key words: recurrent neural networks, supervised learning Zusammenfassung. Der Report führt ein konstruktives Lernverfahren für rekurrente neuronale Netze ein, welches zum Erreichen des Lernzieles lediglich die Gewichte der zu den Ausgabeneuronen führenden Verbindungen modifiziert. Stichwörter: rekurrente neuronale Netze… CONTINUE READING
    Erratum note for the techreport, The "echo state" approach to analysing and training recurrent neural networks
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