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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Two Metropolis-Hastings Algorithms for Posterior Measures with Non-Gaussian Priors in Infinite Dimensions
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Two Metropolis-Hastings Algorithms for Posterior Measures with Non-Gaussian Priors in Infinite Dimensions

机译:对后两种pmmh算法措施与非高斯先验无限维

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摘要

We introduce two classes of Metropolis-Hastings algorithms for sampling target measures that are absolutely continuous with respect to non-Gaussian prior measures on infinite-dimensional Hilbert spaces. In particular, we focus on certain classes of prior measures for which prior-reversible proposal kernels of the autoregressive type can be designed. We then use these proposal kernels to design algorithms that satisfy detailed balance with respect to the target measures. Afterwards, we introduce a new class of prior measures, called the Bessel-K priors, as a generalization of the gamma distribution to measures in infinite dimensions. The Bessel-K priors interpolate between well-known priors such as the gamma distribution and Besov priors and can model sparse or compressible parameters. We present concrete instances of our algorithms for the Bessel-K priors in the context of numerical examples in density estimation, finite-dimensional denoising, and deconvolution on the circle.
机译:我们引入了两类pmmh算法对采样目标措施绝对连续的对非高斯之前措施无限维的希尔伯特空间。具体来说,我们关注之前的某些类prior-reversible提议的措施自回归类型的内核设计。设计算法,满足细致平衡对目标的措施。我们介绍一种新的措施之前,称为Bessel-K先知先觉,如泛化伽马分布在无限的措施维度。γ等之间著名的先知先觉分布和Besov先验模型稀疏或可压缩参数。我们的算法的具体实例Bessel-K先知先觉的上下文中数值例子在密度估计,有限维去噪、反褶积在循环。

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