• DocumentCode
    3494170
  • Title

    Learning to forget: continual prediction with LSTM

  • Author

    Gers, Felix A. ; Schmidhuber, Jiirgen ; Cummins, Fred

  • Author_Institution
    IDSIA, Lugano, Switzerland
  • Volume
    2
  • fYear
    1999
  • fDate
    1999
  • Firstpage
    850
  • Abstract
    Long short-term memory (LSTM) can solve many tasks not solvable by previous learning algorithms for recurrent neural networks (RNNs). We identify a weakness of LSTM networks processing continual input streams without explicitly marked sequence ends. Without resets, the internal state values may grow indefinitely and eventually cause the network to break down. Our remedy is an adaptive “forget gate” that enables an LSTM cell to learn to reset itself at appropriate times, thus releasing internal resources. We review an illustrative benchmark problem on which standard LSTM outperforms other RNN algorithms. All algorithms (including LSTM) fail to solve a continual version of that problem. LSTM with forget gates, however, easily solves it in an elegant way
  • Keywords
    recurrent neural nets; adaptive forget gate; learning; long short-term memory; recurrent neural networks; resource allocation;
  • fLanguage
    English
  • Publisher
    iet
  • Conference_Titel
    Artificial Neural Networks, 1999. ICANN 99. Ninth International Conference on (Conf. Publ. No. 470)
  • Conference_Location
    Edinburgh
  • ISSN
    0537-9989
  • Print_ISBN
    0-85296-721-7
  • Type

    conf

  • DOI
    10.1049/cp:19991218
  • Filename
    818041