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Kernel Thinning and Stein Thinning

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**CANCELED**
Friday, April 22, 2022
3:30 pm - 4:30 pm
Lester Mackey, Statistical Machine Learning Researcher, Microsoft Research, New England
Statistical Science Seminar Series

This talk will introduce two new tools for summarizing a probability distribution more effectively than independent sampling or standard Markov chain Monte Carlo thinning:
1. Given an initial n point summary (for example, from independent sampling or a Markov chain), kernel thinning finds a subset of only square-root n points with comparable worst-case integration error across a reproducing kernel Hilbert space.
2. If the initial summary suffers from biases due to off-target sampling, tempering, or burn-in, Stein thinning simultaneously compresses the summary and improves the accuracy by correcting for these biases.
These tools are especially well-suited for tasks that incur substantial downstream computation costs per summary point like organ and tissue modeling in which each simulation consumes 1000s of CPU hours.

Type: LECTURE/TALK