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UBC Theses and Dissertations

Confidence intervals and regions for steady-state probabilities and additive functionals based on a single sample path of a Markov chain Vestring, Yann

Abstract

When a system is modeled as a Markov chain, the asymptotic properties of the system, such as the steady-state distribution, are often estimated based on a single, empirically observable sample path of the system, whereas the actual steady-state distribution is unknown. A question that arises is: how close is the empirically estimated steady-state distribution to the actual steady-state distribution? In this thesis, we explore how we might numerically determine confidence regions for the steady-state probabilities and confidence intervals for additive functionals of an ergodic Markov chain based on a single sample path.

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Attribution-NonCommercial-NoDerivatives 4.0 International