Subsampling sequential Monte Carlo for static Bayesian models
Autor: | Khue-Dung Dang, Minh-Ngoc Tran, David Gunawan, Robert Kohn, Matias Quiroz |
---|---|
Rok vydání: | 2020 |
Předmět: |
Statistics and Probability
Markov kernel Computer science Bayesian probability Posterior probability 010103 numerical & computational mathematics Bayesian inference 01 natural sciences Statistics::Computation Theoretical Computer Science Hybrid Monte Carlo 010104 statistics & probability Computational Theory and Mathematics Resampling Kernel (statistics) 0101 mathematics Statistics Probability and Uncertainty Particle filter Algorithm |
Zdroj: | Statistics and Computing. 30:1741-1758 |
ISSN: | 1573-1375 0960-3174 |
DOI: | 10.1007/s11222-020-09969-z |
Popis: | We show how to speed up sequential Monte Carlo (SMC) for Bayesian inference in large data problems by data subsampling. SMC sequentially updates a cloud of particles through a sequence of distributions, beginning with a distribution that is easy to sample from such as the prior and ending with the posterior distribution. Each update of the particle cloud consists of three steps: reweighting, resampling, and moving. In the move step, each particle is moved using a Markov kernel; this is typically the most computationally expensive part, particularly when the dataset is large. It is crucial to have an efficient move step to ensure particle diversity. Our article makes two important contributions. First, in order to speed up the SMC computation, we use an approximately unbiased and efficient annealed likelihood estimator based on data subsampling. The subsampling approach is more memory efficient than the corresponding full data SMC, which is an advantage for parallel computation. Second, we use a Metropolis within Gibbs kernel with two conditional updates. A Hamiltonian Monte Carlo update makes distant moves for the model parameters, and a block pseudo-marginal proposal is used for the particles corresponding to the auxiliary variables for the data subsampling. We demonstrate both the usefulness and limitations of the methodology for estimating four generalized linear models and a generalized additive model with large datasets. |
Databáze: | OpenAIRE |
Externí odkaz: |