• DocumentCode
    725
  • Title

    Ordinal Neural Networks Without Iterative Tuning

  • Author

    Fernandez-Navarro, Francisco ; Riccardi, Annalisa ; Carloni, Sante

  • Author_Institution
    Eur. Space Res. & Technol. Centre, Eur. Space Agency, Noordwijk, Netherlands
  • Volume
    25
  • Issue
    11
  • fYear
    2014
  • fDate
    Nov. 2014
  • Firstpage
    2075
  • Lastpage
    2085
  • Abstract
    Ordinal regression (OR) is an important branch of supervised learning in between the multiclass classification and regression. In this paper, the traditional classification scheme of neural network is adapted to learn ordinal ranks. The model proposed imposes monotonicity constraints on the weights connecting the hidden layer with the output layer. To do so, the weights are transcribed using padding variables. This reformulation leads to the so-called inequality constrained least squares (ICLS) problem. Its numerical solution can be obtained by several iterative methods, for example, trust region or line search algorithms. In this proposal, the optimum is determined analytically according to the closed-form solution of the ICLS problem estimated from the Karush-Kuhn-Tucker conditions. Furthermore, following the guidelines of the extreme learning machine framework, the weights connecting the input and the hidden layers are randomly generated, so the final model estimates all its parameters without iterative tuning. The model proposed achieves competitive performance compared with the state-of-the-art neural networks methods for OR.
  • Keywords
    iterative methods; learning (artificial intelligence); least squares approximations; neural nets; pattern classification; ICLS problem; Karush-Kuhn-Tucker conditions; extreme learning machine framework; inequality constrained least square problem; iterative methods; line search algorithms; monotonicity constraints; multiclass classification; neural network; ordinal neural networks; ordinal regression; padding variables; supervised learning; trust region; Adaptation models; Analytical models; Biological neural networks; Encoding; Joining processes; Vectors; Extreme learning machine (ELM); neural networks; ordinal regression (OR); ordinal regression (OR).;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2014.2304976
  • Filename
    6746640