Calculating stationary distribution of Markov chain

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Sargondjani
Sargondjani el 28 de Jun. de 2012
Comentada: yizhou yang el 25 de Nov. de 2019
I am calculating the stationary distribution of a Markov chain. The transition matrix P is sparse (at most 4 entries in every column)
The solution is the solution to the system: P*S=S
I use the following method:
St = eigs(P,1,1);
S = St/sum(St); %S is the (normalized) stationary distribution
but i was wondering if there is a faster method... I have no clue yet how fast it is going to be, but the faster the better, because the speed will determine how accurate i can make my grid (more accurate = larger transition matrix)
thanks in advance!

Respuestas (2)

Oscar
Oscar el 5 de Nov. de 2013
The algorithm only worked for 2 dimensions. I have written an algorithm implementing the same method and it works for all dimensions. See attached file.

Oscar
Oscar el 3 de Nov. de 2013
Editada: Oscar el 3 de Nov. de 2013
Section 6 and 7 of this document explain a method called 'state space reduction' for calculating the stationary distribution of a Markov Chain: http://www.math.wustl.edu/~feres/Math450Lect04.pdf
I have removed a typo from the program that is given in the document and now it is working. See attached file.
  2 comentarios
Clarisha Nijman
Clarisha Nijman el 2 de Nov. de 2018
Dear all,
today I am working on a project and need a stable code for the stationary distribution. I tried several suggestions. This last one gives an error, but as I do not understand the details of the code, your advice is really needed. Can somebody give me some advice please?,
Thank you in advance,
PP =
0.3333 0.1667 0.6000
0.3333 0.5000 0.2000
0.3333 0.3333 0.2000
>> p=limitdist(PP) In an assignment A(:) = B, the number of elements in A and B must be the same.
Error in limitdist (line 27) p(j)=sum(p(1:j1).*(P(1:j1,j)));
yizhou yang
yizhou yang el 25 de Nov. de 2019
Please try using this:
p(j)=sum(p(1:j1).*(P(1:j1,j))');
just need to transpose.

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