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This book gives an introduction to discrete-time Markov chains
which evolve on a separable metric space. The focus is on the
ergodic properties of such chains, i.e., on their long-term
statistical behaviour. Among the main topics are existence and
uniqueness of invariant probability measures, irreducibility,
recurrence, regularizing properties for Markov kernels, and
convergence to equilibrium. These concepts are investigated with
tools such as Lyapunov functions, petite and small sets, Doeblin
and accessible points, coupling, as well as key notions from
classical ergodic theory. The theory is illustrated through several
recurring classes of examples, e.g., random contractions, randomly
switched vector fields, and stochastic differential equations, the
latter providing a bridge to continuous-time Markov processes. The
book can serve as the core for a semester- or year-long graduate
course in probability theory with an emphasis on Markov chains or
random dynamics. Some of the material is also well suited for an
ergodic theory course. Readers should have taken an introductory
course on probability theory, based on measure theory. While there
is a chapter devoted to chains on a countable state space, a
certain familiarity with Markov chains on a finite state space is
also recommended.
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