A review on statistical inference methods for discrete Markov random fields
Methodology
2017-04-12 v1
Abstract
Developing satisfactory methodology for the analysis of Markov random field is a very challenging task. Indeed, due to the Markovian dependence structure, the normalizing constant of the fields cannot be computed using standard analytical or numerical methods. This forms a central issue for any statistical approach as the likelihood is an integral part of the procedure. Furthermore, such unobserved fields cannot be integrated out and the likelihood evaluation becomes a doubly intractable problem. This report gives an overview of some of the methods used in the literature to analyse such observed or unobserved random fields.
Keywords
Cite
@article{arxiv.1704.03331,
title = {A review on statistical inference methods for discrete Markov random fields},
author = {Julien Stoehr},
journal= {arXiv preprint arXiv:1704.03331},
year = {2017}
}