Team, Visitors, External Collaborators
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Highlights of the Year
New Results
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Section: New Results

Ergodic theory for controlled Markov chains with stationary inputs

Consider a stochastic process 𝐗 on a finite state space X={1,,d}. It is conditionally Markov, given a real-valued `input process' ζ. This is assumed to be small, which is modeled through the scaling, ζt=εζt1,0ε1, where ζ1 is a bounded stationary process. The following conclusions are obtained, subject to smoothness assumptions on the controlled transition matrix and a mixing condition on ζ:

The results are illustrated using a version of the timing channel of Anantharam and Verdu.