Informed Proposals for Local MCMC in Discrete Spaces
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https://tandf.figshare.com/articles/dataset/Informed_proposals_for_local_MCMC_in_discrete_spaces/7792106
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<b>There is a lack of methodological results to design efficient Markov chain Monte Carlo (</b><b>MCMC</b><b>) algorithms for statistical models with discrete-valued high-dimensional parameters. Motivated by this consideration, we propose a simple framework for the design of informed</b><b>MCMC</b><b>proposals (i.e., Metropolis–Hastings proposal distributions that appropriately incorporate local information about the target) which is naturally applicable to discrete spaces. Using Peskun-type comparisons of Markov kernels, we explicitly characterize the class of asymptotically optimal proposal distributions under this framework, which we refer to as <i>locally balanced</i> proposals. The resulting algorithms are straightforward to implement in discrete spaces and provide orders of magnitude improvements in efficiency compared to alternative</b><b>MCMC</b><b>schemes, including discrete versions of Hamiltonian Monte Carlo. Simulations are performed with both simulated and real datasets, including a detailed application to Bayesian record linkage. A direct connection with gradient-based</b><b>MCMC</b><b>suggests that locally balanced proposals can be seen as a natural way to extend the latter to discrete spaces. Supplementary materials for this article are available online.</b>
提供机构:
Taylor & Francis
创建时间:
2019-03-01



