Cornell Math - MATH 712, Spring 2005
MATH 712: Probabilistic Methods in Analysis (Spring 2005)
Instructor: Eugene Dynkin
Interactions between the theory of stochastic processes and the theory of partial differential equations are beneficial for both probability theory and analysis. At the beginning, mostly analytic results were used by probabilists. More recently analysts took inspiration from the probabilistic approach.
The main subject of the course is connections between linear and semilinear differential equations and the corresponding Markov processes called diffusions and superdiffusions. An emphasis will be on presenting the main ideas while avoiding technicalities. A general mathematical culture and an interest in probability or analysis (or both) are assumed rather than any specific backgrounds in stochastic processes or PDEs.
- Introduction. Basic facts on Markov processes and martingales.
- Application of the Brownian motion to the Dirichlet problem for the Laplace equation. Probabilistic description of the Perron-Wiener-Brelot solutions.
- Construction of a diffusion with the generator L by using the fundamental solution of a parabolic equation and by solving Ito's stochastic differential equation.
- Description of all positive solutions of the equation Lu = 0 in an arbitrary domain (Martin boundary theory).
- Super-Brownian motion and superdiffusions. Their applications to the Dirichlet problem for nonlinear partial differential equations.
- Hitting probabilities for superdiffusions and removable singularities for solutions of the equation Lu = \psi(u).
- Classification and probabilistic expressions for positive solutions of the equation Lu = \psi(u) in a smooth domain. Theory of the boundary trace.