December 2024: Markov Chain Monte Carlo (MCMC) Methods
Markov Chain Monte Carlo (MCMC) methods are powerful tools for approximating complex probability distributions when direct analytical solutions are unattainable. By generating Markov chains that are invariant with respect to target distributions, MCMC enables accurate inferences and predictions for intricate models.
One of MCMC’s greatest strengths is its robustness. Whether applied in statistical physics, Bayesian inference, or machine learning, MCMC adapts to a wide range of applications, effectively handling high-dimensional and complex problems where traditional methods often fail.
Recent innovations, such as advanced Hamiltonian Monte Carlo methods and non-reversible Markov processes, have further enhanced MCMC's efficiency and broadened its applicability. These advances are driven by ongoing developments in applied probability, which play a crucial role in refining MCMC techniques. These refined MCMC techniques help in the end to address the growing need to quantify uncertainty in the real world.
Collection created by Kengo Kamatani (The Institute of Statistical Mathematics, Japan)
Original Article
PDMP Monte Carlo methods for piecewise smooth densities
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- Advances in Applied Probability / Volume 56 / Issue 4 / 2024
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- 12 March 2024, pp. 1153-1194
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Approximations of geometrically ergodic reversible markov chains
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- Advances in Applied Probability / Volume 53 / Issue 4 / December 2021
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- 22 November 2021, pp. 981-1022
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Limit theorems for sequential MCMC methods
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- Advances in Applied Probability / Volume 52 / Issue 2 / June 2020
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- 15 July 2020, pp. 377-403
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Research Article
Optimal Scaling of the Random Walk Metropolis: General Criteria for the 0.234 Acceptance Rule
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- Journal of Applied Probability / Volume 50 / Issue 1 / March 2013
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- 30 January 2018, pp. 1-15
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Quantitative Convergence Rates for Subgeometric Markov Chains
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- Journal of Applied Probability / Volume 52 / Issue 2 / 2015
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- 30 January 2018, pp. 391-404
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Limit theorems for the zig-zag process
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- Advances in Applied Probability / Volume 49 / Issue 3 / September 2017
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- 08 September 2017, pp. 791-825
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Coupling and Ergodicity of Adaptive Markov Chain Monte Carlo Algorithms
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- Journal of Applied Probability / Volume 44 / Issue 2 / 2007
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- 14 July 2016, pp. 458-475
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Markov chains
Geometric L2 and L1 convergence are equivalent for reversible Markov chains
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- Journal of Applied Probability / Volume 38 / Issue A / January 2001
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- 14 July 2016, pp. 37-41
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General Applied Probability
Perfect simulation using dominating processes on ordered spaces, with application to locally stable point processes
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- Advances in Applied Probability / Volume 32 / Issue 3 / September 2000
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- 01 July 2016, pp. 844-865
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Convergence of Conditional Metropolis-Hastings Samplers
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- Advances in Applied Probability / Volume 46 / Issue 2 / 2014
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- 22 February 2016, pp. 422-445
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