UBC Probability Seminar: Jeffrey Rosenthal
Topic
Speeding up Metropolis using Theorems
Speakers
Details
Markov chain Monte Carlo (MCMC) algorithms, such as the Metropolis algorithm, are designed to converge to complicated high-dimensional target distributions, to facilitate sampling. The speed of this convergence is essential for practical use. In this talk, we will present several theoretical probability results which can help improve the Metropolis algorithm's convergence speed. Specific topics will include: diffusion limits, optimal scaling, optimal proposal shape, tempering, adaptive MCMC, the Containment property, and the notion of adversarial Markov chains. The ideas will be illustrated using the simple graphical example available at probability.ca/met. No particular background knowledge will be assumed.
Additional Information
Note: A coffee reception will be served at ESB 4133 (PIMS Lounge) beginning at 10.30am.