The concept of a Markov chain was developed by Andrey Andreyevich Markov. A Markov chain is a sequence of random variables  with the property that it is forgetful of all but its immediate past.
For a process  evolving on a space
 evolving on a space  and governed by an overall probability law
 and governed by an overall probability law  to be a time-homogeneous Markov chain there must be a set of "transition probabilities"
 to be a time-homogeneous Markov chain there must be a set of "transition probabilities"   for appropriate sets
 for appropriate sets  such that 
for times
 such that 
for times  in
 in  (Ref. 1 Eq. 1.1)
 (Ref. 1 Eq. 1.1)
 
that is  denotes the probability that a chain at x will be in the set A after n steps, or transitions. The independence of
 denotes the probability that a chain at x will be in the set A after n steps, or transitions. The independence of  on the values of
 on the values of  is the Markov property,
and the independence of
 is the Markov property,
and the independence of  and m is the time-homogeneity property.
 and m is the time-homogeneity property.
References[edit]
- S. P. Meyn and R. L. Tweedie "Markov Chains and Stochastic Stability", Springer-Verlag, London (1993)
- Ruichao Ren and G. Orkoulas "Parallel Markov chain Monte Carlo simulations", Journal of Chemical Physics 126 211102 (2007)