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Mathematical analysis / Mathematics / Algebra / Ergodic theory / Stochastic processes / Probability theory / Symbol / Ergodicity / PerronFrobenius theorem / Invariant measure / Approximately finite-dimensional C*-algebra / Dynamical system
Date: 2011-04-22 12:51:17
Mathematical analysis
Mathematics
Algebra
Ergodic theory
Stochastic processes
Probability theory
Symbol
Ergodicity
PerronFrobenius theorem
Invariant measure
Approximately finite-dimensional C*-algebra
Dynamical system

133 Documenta Math. Ergodic Properties and KMS Conditions on C ∗ -Symbolic Dynamical Systems

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