I'm trying to build a MCMC model to simulate a changing beavior over time. I have to simulate one day with a time interval of 10minutes. I have several observations of one day from N users in 144 intervals. So I have U_k=U_1,...,U_N
U users with k ranging from 1 to N and for each user I have X_i=X_1,...X_t
samples. Each user has two possible states, 1 and 0. I have understood that I have to build a transition probability matrix for each time step and then run the MCMC model. Is it right? But I did not understood how to build it in pyMC can anybody provided me suggestion?

does this help: martinthoma.com/pythonmarkovchainpackages ? – smundlay Sep 18 '17 at 9:43

What does your data look like? What have you tried? What is the behaviour that you are simulating? What are your examples? What is t? Needs more information! – Ken Syme Sep 19 '17 at 11:40

Hi @KenSyme t is the time from 1,..,144. The data are in matrix Nx144 where N are different observations (one for each user). – Lorenzo Bottaccioli Sep 19 '17 at 13:32
Perhaps, assuming each user behaves the same way in a particular time interval, at each interval t we can get the matrix [ Pr 0>0 , Pr 1>0; Pr 1>0 , Pr 1>0]
where Pr x >y = (the number of people in interval t+1 who are in state y AND who were in state x in interval t) divided by (the number of people who were in state x in interval t), i.e. the probability based on the sample that someone in the given time interval in state x (0 or 1) will transition to state y (0 or 1) in the next time interval.
Just googling pymc
and mcmc
lead me to "Just the theory, the next pages are about the implementation"
I'd propose you to browse through this document and try the examples in there, this will put you on the right track.

I have read the documentaion but I did not find answer to my question. – Lorenzo Bottaccioli Sep 13 '17 at 13:04