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      Optimal Scaling of MCMC Beyond Metropolis

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          Abstract

          The problem of optimally scaling the proposal distribution in a Markov chain Monte Carlo algorithm is critical to the quality of the generated samples. Much work has gone into obtaining such results for various Metropolis-Hastings (MH) algorithms. Recently, acceptance probabilities other than MH are being employed in problems with intractable target distributions. There is little resource available on tuning the Gaussian proposal distributions for this situation. We obtain optimal scaling results for a general class of acceptance functions, which includes Barker's and Lazy-MH acceptance functions. In particular, optimal values for Barker's algorithm are derived and are found to be significantly different from that obtained for MH algorithms.

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          Author and article information

          Journal
          05 April 2021
          Article
          2104.02020
          74998304-0a1d-44f2-9d2d-3bb7c1eda632

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          65C05, 60F05
          stat.CO math.PR math.ST stat.TH

          Probability,Statistics theory,Mathematical modeling & Computation
          Probability, Statistics theory, Mathematical modeling & Computation

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