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arxiv: 1510.02958 · v2 · pith:36DJ2RPNnew · submitted 2015-10-10 · 📊 stat.CO

Pseudo-Marginal Slice Sampling

classification 📊 stat.CO
keywords markovmcmcpseudo-marginalchainchainsdistributionestimatorframework
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Markov chain Monte Carlo (MCMC) methods asymptotically sample from complex probability distributions. The pseudo-marginal MCMC framework only requires an unbiased estimator of the unnormalized probability distribution function to construct a Markov chain. However, the resulting chains are harder to tune to a target distribution than conventional MCMC, and the types of updates available are limited. We describe a general way to clamp and update the random numbers used in a pseudo-marginal method's unbiased estimator. In this framework we can use slice sampling and other adaptive methods. We obtain more robust Markov chains, which often mix more quickly.

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  1. Bring the noise: exact inference from noisy simulations in collider physics

    hep-ph 2025-02 unverdicted novelty 6.0

    Introduces pseudo-marginal MCMC with unbiased Poisson likelihood estimator for exact inference despite noisy collider Monte Carlo simulations.