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Large deviations for Independent Metropolis Hastings and Metropolis-adjusted Langevin algorithm (2403.08691v3)
Published 13 Mar 2024 in math.PR, math.ST, and stat.TH
Abstract: In this paper, we prove large deviation principles for the empirical measures associated with the Independent Metropolis Hastings (IMH) sampler and the Metropolis-adjusted Langevin Algorithm (MALA). These are the first large deviation results for empirical measures of Markov chains arising from specific Metropolis-Hastings methods on a continuous state space. Moreover, we show that the existing large deviation framework, that we developed in a previous work (Milinanni and Nyquist, 2024), does not cover the Random Walk Metropolis sampler, even in cases when the underlying Markov chain is geometrically ergodic.
- “An introduction to MCMC for machine learning” In Machine Learning 50 Springer, 2003, pp. 5–43
- “Comparison of Markov chains via weak Poincaré inequalities with application to pseudo-marginal MCMC” In The Annals of Statistics 50.6 Institute of Mathematical Statistics, 2022, pp. 3592–3618
- “Weak Poincaré Inequalities for Markov chains: theory and applications”, 2023 arXiv:2312.11689 [math.PR]
- Søren Asmussen and Peter W Glynn “Stochastic simulation: algorithms and analysis” Springer, 2007
- Yves F Atchadé and François Perron “On the geometric ergodicity of Metropolis-Hastings algorithms” In Statistics 41.1 Taylor & Francis, 2007, pp. 77–84
- Mylene Bédard and Jeffrey S Rosenthal “Optimal scaling of Metropolis algorithms: Heading toward general target distributions” In Canadian Journal of Statistics 36.4 Wiley Online Library, 2008, pp. 483–503
- Julian Besag “Comments on “Representations of knowledge in complex systems” by U. Grenander and MI Miller” In Journal of the Royal Statistical Society Series B 56.591-592, 1994, pp. 4
- Joris Bierkens “Non-reversible metropolis-hastings” In Statistics and Computing 26.6 Springer, 2016, pp. 1213–1228
- Joris Bierkens, Pierre Nyquist and Mikola C Schlottke “Large deviations for the empirical measure of the zig-zag process” In The Annals of Applied Probability 31.6 Institute of Mathematical Statistics, 2021, pp. 2811–2843
- Austin Brown and Galin L Jones “Exact convergence analysis for metropolis–hastings independence samplers in Wasserstein distances” In Journal of Applied Probability 61.1 Cambridge University Press, 2024, pp. 33–54
- “Analysis and approximation of rare events” In Representations and Weak Convergence Methods. Series Prob. Theory and Stoch. Modelling 94 Springer, 2019
- “Large Deviations for the Emprirical Measures of Reflecting Brownian Motion and Related Constrained Processes in R+subscript𝑅R_{+}italic_R start_POSTSUBSCRIPT + end_POSTSUBSCRIPT” In Electronic Journal of Probability 8.none Institute of Mathematical StatisticsBernoulli Society, 2003, pp. 1–46
- Ole F Christensen, Gareth O Roberts and Jeffrey S Rosenthal “Scaling limits for the transient phase of local Metropolis–Hastings algorithms” In Journal of the Royal Statistical Society Series B: Statistical Methodology 67.2 Oxford University Press, 2005, pp. 253–268
- A De Acosta “Moderate deviations for empirical measures of Markov chains: lower bounds” In The Annals of Probability 25.1 Institute of Mathematical Statistics, 1997, pp. 259–284
- “Large deviations techniques and applications” Springer Science & Business Media, 2009
- Persi Diaconis, Susan Holmes and Radford M Neal “Analysis of a nonreversible Markov chain sampler” In The Annals of Applied Probability 10.3 Institute of Mathematical Statistics, 2000, pp. 726–752
- Jim Doll, Paul Dupuis and Pierre Nyquist “A large deviations analysis of certain qualitative properties of parallel tempering and infinite swapping algorithms” In Applied Mathematics & Optimization 78 Springer, 2018, pp. 103–144
- Monroe D Donsker and SR Srinivasa Varadhan “Asymptotic evaluation of certain Markov process expectations for large time—III” In Communications on Pure and Applied Mathematics 29.4 Wiley Online Library, 1976, pp. 389–461
- Monroe D Donsker and SR Srinivasa Varadhan “Asymptotic evaluation of certain Markov process expectations for large time, I” In Communications on Pure and Applied Mathematics 28.1 Wiley Online Library, 1975, pp. 1–47
- Monroe D Donsker and SR Srinivasa Varadhan “Asymptotic evaluation of certain Markov process expectations for large time, II” In Communications on Pure and Applied Mathematics 28.2 Wiley Online Library, 1975, pp. 279–301
- Randal Douc, Arnaud Guillin and Eric Moulines “Bounds on regeneration times and limit theorems for subgeometric Markov chains” In Annales de l’IHP Probabilités et statistiques 44.2, 2008, pp. 239–257
- “A weak convergence approach to the theory of large deviations” In A weak convergence approach to the theory of large deviations, Wiley series in probability and mathematical statistics New York: Wiley, 1997
- “On the large deviation rate function for the empirical measures of reversible jump Markov processes” In The Annals of Probability 43.3 Institute of Mathematical Statistics, 2015, pp. 1121–1156
- “Analysis and Optimization of Certain Parallel Monte Carlo Methods in the Low Temperature Limit” In Multiscale Modeling & Simulation 20.1, 2022, pp. 220–249
- “On the infinite swapping limit for parallel tempering” In Multiscale Modeling & Simulation 10.3 SIAM, 2012, pp. 986–1022
- Jin Feng and Thomas G Kurtz “Large deviations for stochastic processes” American Mathematical Soc., 2006
- “The behavior of the spectral gap under growing drift” In Transactions of the American Mathematical Society 362.3, 2010, pp. 1325–1350
- “Convergence rates of the Gibbs sampler, the Metropolis algorithm and other single-site updating dynamics” In Journal of the Royal Statistical Society Series B: Statistical Methodology 55.1 Oxford University Press, 1993, pp. 205–219
- Andrew Gelman, Walter R Gilks and Gareth O Roberts “Weak convergence and optimal scaling of random walk Metropolis algorithms” In The Annals of Applied Probability 7.1 Institute of Mathematical Statistics, 1997, pp. 110–120
- Nathan Glatt-Holtz, Justin Krometis and Cecilia Mondaini “On the accept–reject mechanism for Metropolis–Hastings algorithms” In The Annals of Applied Probability 33.6B Institute of Mathematical Statistics, 2023, pp. 5279–5333
- Martin Hairer, Andrew M Stuart and Sebastian J Vollmer “Spectral gaps for a Metropolis–Hastings algorithm in infinite dimensions” In The Annals of Applied Probability 24.6 Institute of Mathematical Statistics, 2014, pp. 2455–2490
- W Keith Hastings “Monte Carlo sampling methods using Markov chains and their applications” Oxford University Press, 1970
- Chii-Ruey Hwang, Shu-Yin Hwang-Ma and Shuenn-Jyi Sheu “Accelerating diffusions”, 2005
- Søren Fiig Jarner and Ernst Hansen “Geometric ergodicity of Metropolis algorithms” In Stochastic Processes and their Applications 85.2 Elsevier, 2000, pp. 341–361
- Benjamin Jourdain, Tony Lelièvre and Błażej Miasojedow “Optimal scaling for the transient phase of Metropolis Hastings algorithms: The longtime behavior” In Bernoulli 20.4 [Bernoulli Society for Mathematical StatisticsProbability, International Statistical Institute (ISI)], 2014, pp. 1930–1978
- “Large Deviations Asymptotics and the Spectral Theory of Multiplicatively Regular Markov Processes” In Electronic Journal of Probability 10.none Institute of Mathematical StatisticsBernoulli Society, 2005, pp. 61–123
- “Spectral theory and limit theorems for geometrically ergodic Markov processes” In The Annals of Applied Probability 13.1 Institute of Mathematical Statistics, 2003, pp. 304–362
- Samuel Livingstone “Geometric ergodicity of the random walk Metropolis with position-dependent proposal covariance” In Mathematics 9.4 MDPI, 2021, pp. 341
- Jonathan C Mattingly, Natesh S Pillai and Andrew M Stuart “Diffusion limits of the random walk Metropolis algorithm in high dimensions” In The Annals of Applied Probability 22.3 Institute of Mathematical Statistics, 2012, pp. 881–930
- Kerrie L Mengersen and Richard L Tweedie “Rates of convergence of the Hastings and Metropolis algorithms” In The Annals of Statistics 24.1 Institute of Mathematical Statistics, 1996, pp. 101–121
- “Equation of state calculations by fast computing machines” In The Journal of Chemical Physics 21.6 American Institute of Physics, 1953, pp. 1087–1092
- Sean Meyn and Richard L Tweedie “Markov Chains and Stochastic Stability” Cambridge University Press, 2009
- “A large deviation principle for the empirical measures of Metropolis–Hastings chains” In Stochastic Processes and their Applications 170 Elsevier, 2024, pp. 104293
- “An infinite swapping approach to the rare-event sampling problem.” In The Journal of Chemical Physics 135.13, 2011, pp. 134111
- “Weak Poincaré inequality comparisons for ideal and hybrid slice sampling”, 2024 arXiv:2402.13678 [stat.CO]
- “Improving the convergence of reversible samplers” In Journal of Statistical Physics 164 Springer, 2016, pp. 472–494
- “Irreversible Langevin samplers and variance reduction: a large deviations approach” In Nonlinearity 28.7 IOP Publishing, 2015, pp. 2081
- “Variance reduction for irreversible Langevin samplers and diffusion on graphs”, 2015
- “Monte Carlo Statistical Methods”, Springer Texts in Statistics New York, NY: Springer New York, 2004
- “Geometric ergodicity and hybrid Markov chains” In Electronic Communications in Probability 2, 1997, pp. 13–25
- Gareth O Roberts “Linking theory and practice of MCMC” In Oxford Statistical Science Series OXFORD UNIV PRESS, 2003, pp. 145–166
- Gareth O Roberts and Jeffrey S Rosenthal “Optimal scaling for various Metropolis-Hastings algorithms” In Statistical Science 16.4 Institute of Mathematical Statistics, 2001, pp. 351–367
- Gareth O Roberts and Jeffrey S Rosenthal “Optimal scaling of discrete approximations to Langevin diffusions” In Journal of the Royal Statistical Society: Series B (Statistical Methodology) 60.1 Wiley Online Library, 1998, pp. 255–268
- Gareth O Roberts and Jeffrey S Rosenthal “Quantitative Non-Geometric Convergence Bounds for Independence Samplers” In Methodology and Computing in Applied Probability 13.2 Springer, 2011, pp. 391–403
- Gareth O Roberts and Richard L Tweedie “Exponential convergence of Langevin distributions and their discrete approximations” In Bernoulli JSTOR, 1996, pp. 341–363
- Gareth O Roberts and Richard L Tweedie “Geometric convergence and central limit theorems for multidimensional Hastings and Metropolis algorithms” In Biometrika 83.1 Oxford University Press, 1996, pp. 95–110
- Jeffrey S Rosenthal “Asymptotic variance and convergence rates of nearly-periodic Markov chain Monte Carlo algorithms” In Journal of the American Statistical Association 98.461 Taylor & Francis, 2003, pp. 169–177
- “Convergence of Position-Dependent MALA with Application to Conditional Simulation in GLMMs” In Journal of Computational and Graphical Statistics 32.2 Taylor & Francis, 2023, pp. 501–512
- Luke Tierney “A note on Metropolis-Hastings kernels for general state spaces” In The Annals of Applied Probability 8.1 Institute of Mathematical Statistics, 1998, pp. 1–9
- Luke Tierney “Markov Chains for Exploring Posterior Distributions” In The Annals of Statistics 22.4 Institute of Mathematical Statistics, 1994, pp. 1701–1728
- Guanyang Wang “Exact convergence analysis of the independent Metropolis-Hastings algorithms” In Bernoulli 28.3 Bernoulli Society for Mathematical StatisticsProbability, 2022, pp. 2012–2033