Cornell Math - MATH 778, Spring 2000
MATH 778 — Spring 2000
Markov Processes
Instructor: | Eugene Dynkin |
Time: | TR 10:10-11:25 |
Room: | MT 206 |
- Brownian motion. Additive functionals and transformations based on them (killing, random time change, Girsanov's transformation). Local times and self-intersection local times. A general continuous strong Markov process in R.
- Three methods of constructing a diffusion: via fundamental solution of the heat equation, by Ito's equation, by solving a martingale problem.
- The first boundary value problem for linear elliptic and parabolic equation in an arbitrary domain. Analytic solution by the Perron-Wiener-Brelot method. Probabilistic solution. Martin boundary. Stochastic boundary values.
- Exceptional sets in analysis and in probability. Probabilistic theory of potential.
- Infinitely divisible random measures.
- Branching exit Markov systems.
- Superdiffusions and semilinear elliptic and parabolic equations. Removable singularities in a domain and on its boundary — relation to hitting probabilities by a superdiffusion. Characterization of positive solutions by their trace on the boundary.
I will avoid generalities and technicalities and concentrate on principal ideas and concrete problems. Prerequisites: the Lebesgue integration theory and an interest in probability theory.