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Math @ Duke
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Publications [#365309] of Jianfeng Lu
Papers Published
- Sachs, M; Sen, D; Lu, J; Dunson, D, Posterior computation with the Gibbs zig-zag sampler
(April, 2020)
(last updated on 2026/01/15)
Abstract: Markov chain Monte Carlo (MCMC) sampling algorithms have dominated the
literature on posterior computation. However, MCMC faces substantial hurdles in
performing efficient posterior sampling for challenging Bayesian models,
particularly in high-dimensional and large data settings. Motivated in part by
such hurdles, an intriguing new class of piecewise deterministic Markov
processes (PDMPs) has recently been proposed as an alternative to MCMC. One of
the most popular types of PDMPs is known as the zig-zag (ZZ) sampler. Such
algorithms require a computational upper bound in a Poisson thinning step, with
performance improving for tighter bounds. In order to facilitate scaling to
larger classes of problems, we propose a general class of Gibbs zig-zag (GZZ)
samplers. GZZ allows parameters to be updated in blocks with ZZ applied to
certain parameters and traditional MCMC style updates to others. This provides
a flexible framework to combine PDMPs with the rich literature on MCMC
algorithms. We prove appealing theoretical properties of GZZ and demonstrate it
on posterior sampling for logistic models with shrinkage priors for
high-dimensional regression and random effects.
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