• DocumentCode
    2705482
  • Title

    Combining models across algorithms and samples for improved results

  • Author

    Vafaie, Haleh ; Abbott, Dean ; Hotchins, M. ; Matkovsky, I. Philip

  • Author_Institution
    Fed.. Data Corp., Bethesda, MD, USA
  • fYear
    2000
  • fDate
    2000
  • Firstpage
    344
  • Lastpage
    351
  • Abstract
    Multiple approaches have been developed for improving predictive performance of a system by creating and combining various learned models. There are two main approaches to creating model ensembles. The first is to create a set of learned models by applying an algorithm repeatedly to different training sample data, while the second approach applies various learning algorithms to the same sample data. The predictions of the models are then combined according to a voting scheme. This paper presents a method for combining models that was developed using numerous samples, modeling algorithms, and modelers and compares it with the alternate approaches. The results of the model combination methods are evaluated with respect to sensitivity and false alarm rates and are then compared against other approaches
  • Keywords
    neural nets; pattern recognition; false alarm rates; learned models; model ensembles; predictive performance; sensitivity; training sample data; voting scheme; Bagging; Decision trees; Diversity reception; Machine learning; Machine learning algorithms; Neural networks; Pattern recognition; Predictive models; Training data; Voting;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Tools with Artificial Intelligence, 2000. ICTAI 2000. Proceedings. 12th IEEE International Conference on
  • Conference_Location
    Vancouver, BC
  • ISSN
    1082-3409
  • Print_ISBN
    0-7695-0909-6
  • Type

    conf

  • DOI
    10.1109/TAI.2000.889892
  • Filename
    889892