Markov chain Monte Carlo (MCMC) methods form one of the algorithmic foundations of Bayesian inverse problems. The recent development of likelihood-informed subspace (LIS) methods offers a viable route to designing efficient MCMC methods for exploring high-dimensional posterior distributions via exploiting the intrinsic low-dimensional structure of the underlying inverse problem. However, existing LIS methods and the associated performance analysis often assume that the prior distribution is Gaussian. This assumption is limited for inverse problems aiming to promote sparsity in the parameter estimation, as heavy-tailed priors, e.g., Laplace distribution or the elastic net commonly used in Bayesian LASSO, are often needed in this case. To overcome this limitation, we consider a prior normalization technique that transforms any non-Gaussian (e.g. heavy-tailed) priors into standard Gaussian distributions, which makes it possible to implement LIS methods to accelerate MCMC sampling via such transformations. We also rigorously investigate the integration of such transformations with several MCMC methods for high-dimensional problems. Finally, we demonstrate various aspects of our theoretical claims on two nonlinear inverse problems.
翻译:最新发展的可能性知情子空间(LIS)方法为设计高效的MCMC方法提供了一条可行的途径,以探索高维次星分布,利用内在的内在低维结构,探讨潜在的反向问题,然而,现有的LIS方法和相关的性能分析往往假定先前的分布是高尔西亚。这一假设有限,因为反向问题的目的是促进参数估算的松散性,因为在此情况下,通常需要的是重尾的前题,如拉普尔分布或巴伊西亚LASSO常用的弹性网。为了克服这一限制,我们考虑一种先前的正常化技术,将任何非加西(如重尾)以前转化为标准高尔西亚分布,从而有可能采用LIS方法通过这种转换加速MC的采样。我们还严格调查这种转换与多种MC方法在高度问题方面的整合。最后,我们从理论上展示了我们两个非高度问题的理论性主张的各个方面。</s>