Adaptively switching between a particle marginal Metropolis-Hastings and a particle Gibbs kernel in SMC$^2
Sequential Monte Carlo squared (SMC$^2$; Chopin et al., 2012) methods can be used to sample from the exact posterior distribution of intractable likelihood state space models. These methods are the SMC analogue to particle Markov chain Monte Carlo (MCMC; Andrieu et al., 2010) and rely on particle MC...
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Zusammenfassung: | Sequential Monte Carlo squared (SMC$^2$; Chopin et al., 2012) methods can be
used to sample from the exact posterior distribution of intractable likelihood
state space models. These methods are the SMC analogue to particle Markov chain
Monte Carlo (MCMC; Andrieu et al., 2010) and rely on particle MCMC kernels to
mutate the particles at each iteration. Two options for the particle MCMC
kernels are particle marginal Metropolis-Hastings (PMMH) and particle Gibbs
(PG). We introduce a method to adaptively select the particle MCMC kernel at
each iteration of SMC$^2$, with a particular focus on switching between a PMMH
and PG kernel. The resulting method can significantly improve the efficiency of
SMC$^2$ compared to using a fixed particle MCMC kernel throughout the
algorithm. Code for our methods is available at
https://github.com/imkebotha/kernel_switching_smc2. |
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DOI: | 10.48550/arxiv.2307.11553 |