• DocumentCode
    3092239
  • Title

    An adaptive Bayes classification model with an incompletely specified experiment

  • Author

    Theobald, C.E. ; C. Shen, D.

  • Author_Institution
    System Development Corporation, Lexington, Mass.
  • fYear
    1967
  • fDate
    23-25 Oct. 1967
  • Firstpage
    51
  • Lastpage
    56
  • Abstract
    A two stage classification model is presented in which the first stage is a quick computerizd Bayes Rule decision device, and the second is a slow, but perfectly accurate, classifier. A stationary stream of elements or objects to be classified into one of several mutually exclusive categories is fed into the model. The conditional probabilities associated with the Bayes device are assumed unknown at the outset, except up to an initial probability distribution. The a posteriori probabilities from the first stage are treated as information that can speed up or slow down the processing time in the second stage. The latter, after a delay time, feeds back accurate classification information to the first stage to update the conditional probabilities. It is shown that, as the classification process unfolds, any updating scheme that causes the Bayes Classifier ultimately to "learn" the true values of the conditional probabilities also minimizes the expected processing time in the second stage. The learning rate of the system is discussed as a function of the updating scheme. An example of a simple system is presented and the learning rate is derived specifically for that case.
  • Keywords
    Delay effects; Feeds; Probability distribution;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Adaptive Processes, Sixth Symposium on
  • Conference_Location
    Chicago, IL, USA
  • Type

    conf

  • DOI
    10.1109/SAP.1967.272975
  • Filename
    4049742