Markov chain : Markov process |
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A Markov chain (named in honor of Andrei Andreevich Markov) is a stochastic process with what is called the Markov property[?], of which there is a "discrete-time" version and a "continuous-time" version. In the discrete-time case, the process consists of a sequence X1,X2,X3,.... of random variables taking values in a "state space", the value of Xn being "the state of the system at time n". The (discrete-time) Markov property says that the conditional distribution of the "future"
Markov chains have many scientific applications. Markov chains are used to model various processes in queuing theory and statistics, and can also be used as a signal model in entropy coding techniques such as arithmetic coding. Markov chains also have many biological applications, particularly population processes, which are useful in modelling processes that are (at least) analogous to biological populations. Markov processes can also be used to generate superficially "real-looking" text given a sample document: they are used in various pieces of recreational "parody generator" software (see Jeff Harrison). See also:
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