Adaptive Tuning Of Hamiltonian Monte Carlo Within Sequential Monte Carlo
About
Sequential Monte Carlo (SMC) samplers form an attractive alternative to MCMC for Bayesian computation. However, their performance depends strongly on the Markov kernels used to rejuvenate particles. We discuss how to calibrate automatically (using the current particles) Hamiltonian Monte Carlo kernels within SMC. To do so, we build upon the adaptive SMC approach of Fearnhead and Taylor (2013), and we also suggest alternative methods. We illustrate the advantages of using HMC kernels within an SMC sampler via an extensive numerical study.
Alexander Buchholz, Nicolas Chopin, Pierre E. Jacob• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Target Distribution Sampling | Funnel 10D | Sinkhorn Distance117.5 | 29 | |
| Toy target distribution sampling | GMM40 d = 50 | W2 (Entropy Regulated, eps=0.05)2.42e+4 | 18 | |
| Learning Continuous Target Distributions | MoS d = 50 | Sinkhorn Cost1.48e+3 | 11 | |
| Target Distribution Sampling | Many-Well 5D | Sinkhorn Distance1.11 | 11 |
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