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Mathematical analysis / Mathematics / Topology / Stochastic processes / Measure theory / Ergodic theory / Topological vector spaces / Compactification / Poisson boundary / Mixing / Measure-preserving dynamical system / Amenable group
Date: 2015-08-14 13:44:04
Mathematical analysis
Mathematics
Topology
Stochastic processes
Measure theory
Ergodic theory
Topological vector spaces
Compactification
Poisson boundary
Mixing
Measure-preserving dynamical system
Amenable group

Generic Stationary Measures and Actions Lewis Bowen∗, Yair Hartman†and Omer Tamuz‡ August 14, 2015 Abstract Let G be a countably infinite group, and let µ be a generating probability measure

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