The Bayesian approach to inverse problems with functional unknowns, has received significant attention in recent years. An important component of the developing theory is the study of the asymptotic performance of the posterior distribution in the frequentist setting. The present paper contributes to the area of Bayesian inverse problems by formulating a posterior contraction theory for linear inverse problems, with truncated Gaussian series priors, and under general smoothness assumptions. Emphasis is on the intrinsic role of the truncation point both for the direct as well as for the inverse problem, which are related through the modulus of continuity as this was recently highlighted by Knapik and Salomond (2018).
翻译:近些年来,对功能性未知的反向问题采取的贝叶斯方法受到极大关注,发展理论的一个重要部分是研究经常现象环境中后方分布的无症状性能,本文件通过为线性反向问题、短短高斯系列前科和一般平稳假设制定后端收缩理论,帮助解决巴伊斯地区的反面问题,强调截断点对于直接问题和反面问题所具有的内在作用,这些问题通过Knapik和Salomond最近强调的连续性模式(2018年)而相关联。