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MATH 777: Stochastic Processes: Characterization and Convergence (Fall
2007)
Instructor: Rick Durrett
Meeting Time & Room
Rather than a trip to the frontiers of knowledge, this is a course on
a topic that every probabilist should know. In many situations one would
like to show that a sequence of stochastic processes converges to a limit.
Examples are the convergence of rescaled random walks or martingales
to Brownian motion, and Markov chains to limiting diffusions.
The most
commonly used approach is to show that the sequence is relatively compact,
and that every subsequential limit has properties that uniquely characterize
the limit. For example, Brownian motion is the only martingale with quadratic
variation t, or more generally it solves a well-posed martingale problem.
A rough
outline is:
- generalities about weak convergence in metric spaces
- path spaces C and
D, their topologies, conditions for relative compactness
- convergence
of random walks to Brownian motion and stable processes
- generators
of Markov processes, and martingale problems
- convergence to diffusions.
For more details consult our main sources:
- Billingsley (1968), Weak Convergence
of Probability Measures (Chapters 1-3) with improvements from
his 1971 CBMS lecture notes
- Ethier and Kurtz (1986), Markov Processes:
Characterization and Convergence (parts of Chapters 3-11)
- Jacod and Shiryaev (1987), Limit Theorems for
Stochastic Processes (Chapters VI, VIII, IX)
Last modified:April 2, 2007
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