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1
References
2
Direct Methods
3
Acceptance rejection
4
Creating samples from mu
5
Running time
6
Markov chain Monte Carlo
7
Mixing time
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Relaxation times
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probabilistic approaches
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analytic approaches
11
Independent sampler
12
Proposal kernel
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Random work metropolis
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Conductance
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Detailed Balance
Description:
Dive into a comprehensive lecture on sampling techniques presented by Andreas Eberle from the University of Bonn at the Geometric Methods in Optimization and Sampling Boot Camp. Explore various sampling methods, including direct methods, acceptance-rejection techniques, and Markov chain Monte Carlo. Gain insights into creating samples from probability distributions, analyzing running times, and understanding mixing and relaxation times. Examine probabilistic and analytic approaches, independent samplers, proposal kernels, and the Random Walk Metropolis algorithm. Investigate concepts such as conductance and detailed balance, essential for mastering advanced sampling techniques in optimization and computational statistics.

Sampling Crash Course

Simons Institute
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