Estimation of Non-Gaussian Probability Density by Dynamic Bayesian Networks

  • Cho, Hyun-C. (Electrical Engineering Dept./260, University of Nevada-Reno) ;
  • Fadali, Sami M. (Electrical Engineering Dept./260, University of Nevada-Reno) ;
  • Lee, Kwon-S. (Division of Electrical, Electronic, and Computer Eng., Dong-A Univ.)
  • 발행 : 2005.06.02

초록

A new methodology for discrete non-Gaussian probability density estimation is investigated in this paper based on a dynamic Bayesian network (DBN) and kernel functions. The estimator consists of a DBN in which the transition distribution is represented with kernel functions. The estimator parameters are determined through a recursive learning algorithm according to the maximum likelihood (ML) scheme. A discrete-type Poisson distribution is generated in a simulation experiment to evaluate the proposed method. In addition, an unknown probability density generated by nonlinear transformation of a Poisson random variable is simulated. Computer simulations numerically demonstrate that the method successfully estimates the unknown probability distribution function (PDF).

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