Ensemble samplers with affine invariance 论文
2010Communications in Applied Mathematics and Computational Science引用 3064
Markov Chains and Monte Carlo MethodsBayesian Methods and Mixture ModelsTheoretical and Computational Physics
摘要
We propose a family of Markov chain Monte Carlo methods whose performance is unaffected by affine tranformations of space. These algorithms are easy to construct and require little or no additional computational overhead. They should be particularly useful for sampling badly scaled distributions. Computational tests show that the affine invariant methods can be significantly faster than standard MCMC methods on highly skewed distributions.