Large deviations for discrete-time processes with averaging

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Author(s): Veretennikov, A. Yu; Gulinsky, O. V.
Publisher: VSP
Year: 1993

Language: English
Pages: 186
City: Utrecht, the Netherlands

Part 1 Introduction to large deviations: Cramer-type results (the classical Cramer theorem
the extensions of Cramer's theorem)
large deviations on the space of probability measures
application to statistical mechanics
basic large deviations concepts
large deviations for sums of independent and identically distributed variables in function space
applications to recursive estimation and control theory. Part 2 Large deviations for non-Markovian recursive scheme with additive "white noise". Part 3 Large deviation for the recursive scheme with stationary disturbances: large deviations for the sums of stationary
large deviations for recursive scheme with the Wold-type disturbances. Part 4 Generalization of Cramar's theorem: large deviations for sums of stationary sequences
large deviations for sums of semimartingales. Part 5 Mixing for Markov processes: definitions
main results
preliminary results
proofs of theorems 5.1-5.6
mixing coeficients for recursive procedure. Part 6 The averaging principle for some recursive schemes. Part 7 Normal deviations. Part 8 Large deviations for Markov processes: examples
Markovian noncompact case
auxiliary results
proofs of theorems 8.6-8.8
proof of theorem 8.9. Part 9 Large deviations for stationary processes: compact nonsingular case
noncompact nonsingular case. Part 10 Large deviations for empirical measures: Markov chain with Doeblin-type condition
noncompact Markov case
stationary compact case
stationary noncompact case. Part 11 Large deviations for empirical measures: compact case
noncompact case.