Approximating Markov chains and V-geometric ergodicity via weak perturbation theory
Abstract
Let P be a Markov kernel on a measurable space and let V:[1,+∞). This paper provides explicit connections between the V-geometric ergodicity of P and that of finite-rank nonnegative sub-Markov kernels k approximating P. A special attention is paid to obtain an efficient way to specify the convergence rate for P from that of k and conversely. Furthermore, explicit bounds are obtained for the total variation distance between the P-invariant probability measure and the k-invariant positive measure. The proofs are based on the Keller-Liverani perturbation theorem which requires an accurate control of the essential spectral radius of P on usual weighted supremum spaces. Such computable bounds are derived in terms of standard drift conditions. Our spectral procedure to estimate both the convergence rate and the invariant probability measure of P is applied to truncation of discrete Markov kernels on :=.
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