• DocumentCode
    3308755
  • Title

    Stacked generalization in neural networks: generalization on statistically neutral problems

  • Author

    Ghorbani, Ali A. ; Owrangh, Kiarash

  • Author_Institution
    Fac. of Comput. Sci., New Brunswick Univ., Fredericton, NB, Canada
  • Volume
    3
  • fYear
    2001
  • fDate
    2001
  • Firstpage
    1715
  • Abstract
    Generalization continues to be one of the most important topic in neural networks and other classifiers. In the last number of years, number of different methods have been developed to improve generalization accuracy. Any classifier that uses induction to find the class concept from the training patterns will have a hard time to achieve an acceptable level of generalization accuracy when the problem to be learned is a statistically neutral problem. A problem is statistically neutral if the probability of mapping an input onto an output is always the chance value of 0.5. We examine the generalization behaviour of multilayer neural networks on learning statistically neutral problems using single level learning models (e.g., conventional cross-validation scheme) as well as multiple level learning models (e.g., stacked generalization method). We show that for statistically neutral problems such as parity and majority function, the stacked generalization scheme improves classification performance and generalization accuracy over the single level cross-validation model
  • Keywords
    generalisation (artificial intelligence); learning (artificial intelligence); multilayer perceptrons; pattern classification; probability; statistical analysis; classification performance; conventional cross-validation scheme; generalization accuracy; generalization behaviour; majority function; multilayer neural networks; multiple level learning models; parity; single level learning models; stacked generalization method; statistically neutral problems; Artificial neural networks; Computer science; Concrete; Intelligent networks; Machine learning; Multi-layer neural network; Neural networks; Niobium; Predictive models; Probability;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Neural Networks, 2001. Proceedings. IJCNN '01. International Joint Conference on
  • Conference_Location
    Washington, DC
  • ISSN
    1098-7576
  • Print_ISBN
    0-7803-7044-9
  • Type

    conf

  • DOI
    10.1109/IJCNN.2001.938420
  • Filename
    938420