Abstract
In this study Gibbs sampling, a widely used simulation method, is ap-
plied to the steady model, a simple variation of the dynamic linear
model, and the model parameters are estimated. The estimates ob-
tained from Gibbs sampling and the results for the standard Kalman filter are compared and are found to be close. These similarities in the
results indicate the success of the stochastic simulation. In this study,
a variance modulation on the steady model is also applied and Gibbs
sampling is proposed to overcome analytic problems. In the variance
adaptation, defined as $a\mu_t^b(a,b>0)$ estimates for the model parame-
ters are obtained for different values of a and b.