The use of Cauchy Markov random field priors in statistical inverse problems can potentially lead to posterior distributions which are non-Gaussian, high-dimensional, multimodal and heavy-tailed. In order to use such priors successfully, sophisticated optimization and Markov chain Monte Carlo (MCMC) methods are usually required. In this paper, our focus is largely on reviewing recently developed Cauchy difference priors, while introducing interesting new variants, whilst providing a comparison. We firstly propose a one-dimensional second order Cauchy difference prior, and construct new first and second order two-dimensional isotropic Cauchy difference priors. Another new Cauchy prior is based on the stochastic partial differential equation approach, derived from Mat\'{e}rn type Gaussian presentation. The comparison also includes Cauchy sheets. Our numerical computations are based on both maximum a posteriori and conditional mean estimation.We exploit state-of-the-art MCMC methodologies such as Metropolis-within-Gibbs, Repelling-Attracting Metropolis, and No-U-Turn sampler variant of Hamiltonian Monte Carlo. We demonstrate the models and methods constructed for one-dimensional and two-dimensional deconvolution problems. Thorough MCMC statistics are provided for all test cases, including potential scale reduction factors.
翻译:在统计逆差问题中,使用Cauchy Markov随机字段在统计反差问题中可以导致非Gausian、高维、多式和重尾的后端分布。为了成功地使用这些前端,通常需要先进的优化和Markov链Monte Carlo(MCMC)方法。在本文中,我们的重点主要是审查最近开发的Cauchy差异前端,同时引入有趣的新变量,同时提供比较。我们首先提出一个一维第二级的Cauchy差异,并建造新的一和二等二等二等的Cauchy差异前端。另一个新前端的Cauchy基于从 Mat\'e}rn ty Gaussian 演示中衍生出来的分等分等分方位法。比较还包括Caugypie。我们的数字计算基于最大后端和有条件的中值估计。我们利用了诸如Metopolis-in-Gibbs、Repell-trating Metropolical 和No-U-Tro-dal Produstrual ex Festal ex Festal Agresmissional 和Cal-clasm-dal 提供两个构建的模型的模型模型和模拟的模型和模型和模型的模型的模型和模型的二等分位数。