Publication | Open Access
Differential Evolution Markov Chain with snooker updater and fewer chains
590
Citations
23
References
2008
Year
EngineeringStandard De-mcMarkov Chain Monte CarloStochastic SimulationHidden Markov ModelStochastic ProcessesAdaptive Mcmc AlgorithmBayesian MethodsModeling And SimulationSnooker UpdaterMonte CarloProbability TheoryComputer ScienceMonte Carlo SamplingSequential Monte CarloMarkov Decision ProcessStochastic ModelingMonte Carlo MethodMarkov KernelNonlinear Mixed Effects
Differential Evolution Markov Chain (DE-MC) is an adaptive MCMC algorithm, in which multiple chains are run in parallel. Standard DE-MC requires at least N=2d chains to be run in parallel, where d is the dimensionality of the posterior. This paper extends DE-MC with a snooker updater and shows by simulation and real examples that DE-MC can work for d up to 50–100 with fewer parallel chains (e.g. N=3) by exploiting information from their past by generating jumps from differences of pairs of past states. This approach extends the practical applicability of DE-MC and is shown to be about 5–26 times more efficient than the optimal Normal random walk Metropolis sampler for the 97.5% point of a variable from a 25–50 dimensional Student t 3 distribution. In a nonlinear mixed effects model example the approach outperformed a block-updater geared to the specific features of the model.
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