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In [[probability and statistics]] a '''Markov renewal process''' is a [[stochastic process|random process]] that generalizes the notion of [[Markov property|Markov]] jump processes. Other random processes like [[Markov chain]], [[Poisson process]], and [[renewal process]] can be derived as a special case of an MRP (Markov renewal process).
 
==Definition==
Consider a state space <math>\mathrm{S}.</math> Consider a set of random variables <math>(X_n,T_n)</math>, where <math>T_n</math> are the jump times and <math>X_n</math> are the associated states in the [[Markov chain]] (see Figure). Let the inter-arrival time, <math>\tau_n=T_n-T_{n-1}</math>. Then the sequence (X<sub>''n''</sub>, T<sub>''n''</sub>) is called a Markov renewal process if
:<math>\Pr(\tau_{n+1}\le t, X_{n+1}=j|(X_0, T_0), (X_1, T_1),\ldots, (X_n=i, T_n)) </math>
:<math> =\Pr(\tau_{n+1}\le t, X_{n+1}=j|X_n=i)\, \forall n \ge1,t\ge0, i,j \in \mathrm{S} </math>
[[File:Markov renewal process - Depiction.jpg|center|600px|An illustration of a Markov renewal process]]
 
==Relation to other stochastic processes==
# If we define a new stochastic process <math>Y_t:=X_n</math> for <math>t \in [T_n,T_{n+1})</math>, then the process <math>Y_t</math> is called a semi-Markov process. Note the main difference between an MRP and a semi-Markov process is that the former is defined as a two-[[tuple]] of states and times, whereas the latter is the actual random process that evolves over time. The entire process is not Markovian, i.e., memoryless, as happens in a [[CTMC]]. Instead the process is Markovian only at the specified jump instants. This is the rationale behind the name, '''''Semi'''''-Markov.<ref>{{cite book|last=Medhi|first=J.|title=Stochastic processes|year=1982|publisher=Wiley & Sons|location=New York|isbn=978-0-470-27000-4}}</ref><ref>{{cite book|last=Ross|first=Sheldon M.|title=Stochastic processes.|year=1999|publisher=Routledge.|location=New York [u.a.]|isbn=978-0-471-12062-9|edition=2nd ed.}}</ref><ref>{{cite book|last=Barbu|first=Vlad Stefan|title=Semi-Markov chains and hidden semi-Markov models toward applications : their use in reliability and DNA analysis|year=2008|publisher=Springer|location=New York|isbn=978-0-387-73171-1|coauthors=Limnios, Nikolaos}}</ref>
# A semi-Markov process where all the holding times are [[exponential distribution|exponentially distributed]] is called a [[Continuous-time Markov process|continuous time Markov chain/process (CTMC)]]. In other words, if the inter-arrival times are exponentially distributed and if the waiting time in a state and the next state reached are independent, we have a CTMC.
#:<math>\Pr(\tau_{n+1}\le t, X_{n+1}=j|(X_0, T_0), (X_1, T_1),\ldots, (X_n=i, T_n))=\Pr(\tau_{n+1}\le t, X_{n+1}=j|X_n=i)</math>
#:<math>=\Pr(X_{n+1}=j|X_n=i)(1-e^{-\lambda_i t}), \text{ for all } n \ge1,t\ge0, i,j \in \mathrm{S} </math>
# The sequence <math>X_n</math> in the MRP is a discrete-time [[Markov chain]]. In other words, if the time variables are ignored in the MRP equation, we end up with a [[DTMC]].
#:<math>\Pr(X_{n+1}=j|X_0, X_1, \ldots, X_n=i)=\Pr(X_{n+1}=j|X_n=i)\, \forall n \ge1, i,j \in \mathrm{S} </math>
# If the sequence of <math>\tau</math>s are independent and identically distributed, and if their distribution does not depend on the state <math>X_n</math>, then the process is a [[renewal process]]. So, if the exact states are ignored and we have a chain of iid times, then we have a renewal process.
#:<math>\Pr(\tau_{n+1}\le t|T_0, T_1, \ldots, T_n)=\Pr(\tau_{n+1}\le t)\, \forall n \ge1, \forall t\ge0 </math>
 
==See also==
* [[Markov process]]
* [[Renewal theory]]
* [[Variable-order Markov model]]
 
{{inline|date=July 2012}}
==References and Further Reading==
{{Reflist}}
 
[[Category:Markov processes]]

Latest revision as of 13:50, 11 December 2012

In probability and statistics a Markov renewal process is a random process that generalizes the notion of Markov jump processes. Other random processes like Markov chain, Poisson process, and renewal process can be derived as a special case of an MRP (Markov renewal process).

Definition

Consider a state space Consider a set of random variables , where are the jump times and are the associated states in the Markov chain (see Figure). Let the inter-arrival time, . Then the sequence (Xn, Tn) is called a Markov renewal process if

An illustration of a Markov renewal process
An illustration of a Markov renewal process

Relation to other stochastic processes

  1. If we define a new stochastic process for , then the process is called a semi-Markov process. Note the main difference between an MRP and a semi-Markov process is that the former is defined as a two-tuple of states and times, whereas the latter is the actual random process that evolves over time. The entire process is not Markovian, i.e., memoryless, as happens in a CTMC. Instead the process is Markovian only at the specified jump instants. This is the rationale behind the name, Semi-Markov.[1][2][3]
  2. A semi-Markov process where all the holding times are exponentially distributed is called a continuous time Markov chain/process (CTMC). In other words, if the inter-arrival times are exponentially distributed and if the waiting time in a state and the next state reached are independent, we have a CTMC.
  3. The sequence in the MRP is a discrete-time Markov chain. In other words, if the time variables are ignored in the MRP equation, we end up with a DTMC.
  4. If the sequence of s are independent and identically distributed, and if their distribution does not depend on the state , then the process is a renewal process. So, if the exact states are ignored and we have a chain of iid times, then we have a renewal process.

See also

Template:Inline

References and Further Reading

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