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#78 Exploring MCMC Sampler Algorithms, with Matt D. Hoffman

Learning Bayesian Statistics

CHAPTER

Generalized Hamiltonian Monte Carlo

Generalized HMC is this thing that's been around for quite a long time now. It came out not very, just a few years after the original hybrid Monte Carlo paper. The big downside for generalized HMC and the reason it hasn't been more widely used in practice is that it exposes you to kind of this gauntlet of accept reject steps. And so you wind up needing to use very small step sizes and it's just not practical unless you do something like the slice sampling trick that Radford Neil introduced a few years ago.

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