Hidden Markov random field explained
In statistics, a hidden Markov random field is a generalization of a hidden Markov model. Instead of having an underlying Markov chain, hidden Markov random fields have an underlying Markov random field.
Suppose that we observe a random variable
, where
. Hidden Markov random fields assume that the probabilistic nature of
is determined by the unobservable
Markov random field
,
.That is, given the neighbors
of
is independent of all other
(Markov property).The main difference with a
hidden Markov model is that neighborhood is not defined in 1 dimension but within a network, i.e.
is allowed to have more than the two neighbors that it would have in a
Markov chain. The model is formulated in such a way that given
,
are independent (conditional independence of the observable variables given the Markov random field).
In the vast majority of the related literature, the number of possible latent states is considered a user-defined constant. However, ideas from nonparametric Bayesian statistics, which allow for data-driven inference of the number of states, have been also recently investigated with success, e.g.[1]
See also
References
- Book: Yongyue Zhang . Stephen . Smith . Michael . Brady . Hidden Markov Random Field Model and Segmentation of Brain MR Images . 11 May 2000 . Oxford Centre for Functional Magnetic Resonance Imaging of the Brain (FMRIB) . Hidden Markov Random Field Model . http://www.fmrib.ox.ac.uk/analysis/techrep/tr00yz1/tr00yz1/node5.html . FMRIB Technical Report TR00YZ1.
Notes and References
- Sotirios P. Chatzis, Gabriel Tsechpenakis, “The Infinite Hidden Markov Random Field Model,” IEEE Transactions on Neural Networks, vol. 21, no. 6, pp. 1004–1014, June 2010. https://ieeexplore.ieee.org/document/5458106/