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Generalized Modes in Bayesian Inverse Problems

机译:贝叶斯逆问题的通用模式

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摘要

Uncertainty quantification requires efficient summarization of high- or even infinite-dimensional (i.e., nonparametric) distributions based on, e.g., suitable point estimates (modes) for posterior distributions arising from model-specific prior distributions. In this work, we consider nonparametric modes and maximum a posteriori (MAP) estimates for priors that do not admit continuous densities, for which previous approaches based on small ball probabilities fail. We propose a novel definition of generalized modes based on the concept of approximating sequences, which reduce to the classical mode in certain situations that include Gaussian priors but also exist for a more general class of priors. The latter includes the case of priors that impose strict bounds on the admissible parameters and in particular of uniform priors. For uniform priors defined by random series with uniformly distributed coefficients, we show that generalized MAP estimates but not classical MAP estimates can be characterized as minimizers of a suitable functional that plays the role of a generalized Onsager-Machlup functional. This is then used to show consistency of nonlinear Bayesian inverse problems with uniform priors and Gaussian noise.
机译:不确定性量化需要有效的高,甚至总结无限维度(即非参数)分布的基础上,举例来说,合适的点后验分布的估计(模式)因模型相关的先验分布。在这项工作中,我们考虑非参数模式和最大后验(MAP)对先验估计不承认连续密度,以前的方法基于小球概率失败。广义模式概念的基础上近似序列,这减少了在某些情况下,包括经典模式高斯先验还存在更普遍先知先觉。先知先觉,实施严格的界限容许参数和特别的统一的先知先觉。与均匀分布随机序列系数,我们表明,广义的地图估计但不是经典地图估计可以作为一个合适的解的特征功能,广义的角色Onsager-Machlup功能。显示非线性贝叶斯逆的一致性统一的先验和高斯噪声的问题。

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