Comparison of Two Methods for Caluculating the Partition Functions of Various Spatial Statistical Models
Version 2 2024-06-16, 13:36Version 2 2024-06-16, 13:36
Version 1 2014-10-27, 16:26Version 1 2014-10-27, 16:26
journal contribution
posted on 2024-06-16, 13:36authored byF Huang, Y Ogata
Likelihood computation in spatial statistics requires accurate and efficient calculation of the normalizing constant (i.e. partition function) of the Gibbs distribution of the model. Two available methods to calculate the normalizing constant by Markov chain Monte Carlo methods are compared by simulation experiments for an Ising model, a Gaussian Markov field model and a pairwise interaction point field model.