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Caltech

Applied Mathematics Colloquium

Monday, May 14, 2012
4:15pm to 5:15pm
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Annenberg 105
Implicit Sampling, with Applications to Data Assimilation
Alexandre Chorin, Professor, Mathematics, UC Berkeley,
It is often necessary to sample a given probability density (pdf), i.e., use a computer to construct a sequence of independent random vectors x_i, i=1,2,..., whose histogram converges to the given pdf. This can be difficult because the sample space can be huge, and more important, because the portion of the space where the density is significant can be very small, so that one may miss it by an ill-designed sampling scheme. Indeed, Markov-chain Monte Carlo (MCMC), the most widely used sampling scheme, can be thought of as a search algorithm, where one starts at an arbitrary point and one advances step-by-step towards the high probability region of the space. This can be expensive, in particular because one is typically interested in independent samples, while the chain has a memory.

I will present an alternative, in which samples are found by solving an algebraic equation with a random input rather than by following a chain; each sample is independent of the previous samples. I will explain the construction in the context of numerical integration, and then apply it to filtering and data assimilation.
For more information, please contact Sydney Garstang by phone at x4555 or by email at [email protected] or visit http://www.acm.caltech.edu.