• DocumentCode
    3284643
  • Title

    Parameter learning for hybrid Bayesian Networks with Gaussian mixture and Dirac mixture conditional densities

  • Author

    Krauthausen, P. ; Hanebeck, U.D.

  • Author_Institution
    Intell. Sensor-Actuator-Syst. Lab. (ISAS), Karlsruhe Inst. of Technol., Karlsruhe, Germany
  • fYear
    2010
  • fDate
    June 30 2010-July 2 2010
  • Firstpage
    480
  • Lastpage
    485
  • Abstract
    In this paper, the first algorithm for learning hybrid Bayesian Networks with Gaussian mixture and Dirac mixture conditional densities from data given their structure is presented. The mixture densities to be learned allow for nonlinear dependencies between the variables and exact closed-form inference. For learning the network´s parameters, an incremental gradient ascent algorithm is derived. Analytic expressions for the partial derivatives and their combination with messages are presented. This hybrid approach subsumes the existing approach for purely discrete-valued networks and is applicable to partially observable networks, too. Its practicability is demonstrated by a reference example.
  • Keywords
    Gaussian processes; belief networks; gradient methods; inference mechanisms; learning (artificial intelligence); observability; parameter estimation; statistical analysis; Dirac mixture; Gaussian mixture; conditional density; discrete value network; gradient ascent algorithm; hybrid Bayesian network; machine learning; parameter learning; partial derivative; partially observable network; Bayesian methods; EMP radiation effects; Graphical models; Humanoid robots; Inference algorithms; Machine learning; Observability; Power system modeling; Random variables; Robot control;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    American Control Conference (ACC), 2010
  • Conference_Location
    Baltimore, MD
  • ISSN
    0743-1619
  • Print_ISBN
    978-1-4244-7426-4
  • Type

    conf

  • DOI
    10.1109/ACC.2010.5530957
  • Filename
    5530957