A course on large deviations with an to introduction to Gibbs measures

By: Firas Rassoul-AghaContributor(s): Timo SeppäläinenMaterial type: TextTextPublication details: Rhode Island: American Mathematical Society, [c2015]Description: 318 pISBN: 9780821875780Subject(s): MathematicsLOC classification: QA 273.67
Contents:
Part I. Large deviations: General theory and i.i.d. processes Chapter 1. Introductory discussion Chapter 2. The large deviation principle Chapter 3. Large deviations and asymptotics of integrals Chapter 4. Convex analysis in large deviation theory Chapter 5. Relative entropy and large deviations for empirical measures Chapter 6. Process level large deviations for i.i.d. fields Part II. Statistical mechanics Chapter 7. Formalism for classical lattice systems Chapter 8. Large deviations and equilibrium statistical mechanics Chapter 9. Phase transition in the Ising model Chapter 10. Percolation approach to phase transition Part III. Additional large deviation topics Chapter 11. Further asymptotics for i.i.d. random variables Chapter 12. Large deviations through the limiting generating function Chapter 13. Large deviations for Markov chains Chapter 14. Convexity criterion for large deviations Chapter 15. Nonstationary independent variables Chapter 16. Random walk in a dynamical random environment
Summary: This is an introductory course on the methods of computing asymptotics of probabilities of rare events: the theory of large deviations. The book combines large deviation theory with basic statistical mechanics, namely Gibbs measures with their variational characterization and the phase transition of the Ising model, in a text intended for a one semester or quarter course. The book begins with a straightforward approach to the key ideas and results of large deviation theory in the context of independent identically distributed random variables. This includes Cramér's theorem, relative entropy, Sanov's theorem, process level large deviations, convex duality, and change of measure arguments. --- summary provided by publisher
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Part I. Large deviations: General theory and i.i.d. processes
Chapter 1. Introductory discussion
Chapter 2. The large deviation principle
Chapter 3. Large deviations and asymptotics of integrals
Chapter 4. Convex analysis in large deviation theory
Chapter 5. Relative entropy and large deviations for empirical measures
Chapter 6. Process level large deviations for i.i.d. fields

Part II. Statistical mechanics
Chapter 7. Formalism for classical lattice systems
Chapter 8. Large deviations and equilibrium statistical mechanics
Chapter 9. Phase transition in the Ising model
Chapter 10. Percolation approach to phase transition

Part III. Additional large deviation topics
Chapter 11. Further asymptotics for i.i.d. random variables
Chapter 12. Large deviations through the limiting generating function
Chapter 13. Large deviations for Markov chains
Chapter 14. Convexity criterion for large deviations
Chapter 15. Nonstationary independent variables
Chapter 16. Random walk in a dynamical random environment

This is an introductory course on the methods of computing asymptotics of probabilities of rare events: the theory of large deviations. The book combines large deviation theory with basic statistical mechanics, namely Gibbs measures with their variational characterization and the phase transition of the Ising model, in a text intended for a one semester or quarter course.

The book begins with a straightforward approach to the key ideas and results of large deviation theory in the context of independent identically distributed random variables. This includes Cramér's theorem, relative entropy, Sanov's theorem, process level large deviations, convex duality, and change of measure arguments. --- summary provided by publisher

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