We present a framework for fitting inverse problem models via variational Bayes approximations. This methodology guarantees flexibility to statistical model specification for a broad range of applications, good accuracy performances and reduced model fitting times, when compared with standard Markov chain Monte Carlo methods. The message passing and factor graph fragment approach to variational Bayes we describe facilitates streamlined implementation of approximate inference algorithms and forms the basis to software development. Such approach allows for supple inclusion of numerous response distributions and penalizations into the inverse problem model. Albeit our analysis is circumscribed to one- and two-dimensional response variables, we lay down an infrastructure where streamlining algorithmic steps based on nullifying weak interactions between variables are extendible to inverse problems in higher dimensions. Image processing applications motivated by biomedical and archaeological problems are included as illustrations.
翻译:我们提出了一个框架,以便通过变式贝耶斯近似法来适当设计反问题模型。这个方法保证了与标准马可夫链蒙得卡洛方法相比,对广泛应用、准确性表现和减少模型适配时间的统计示范规格的灵活性。我们所描述的对变式贝雅斯的信息传递和因子图碎块方法有利于简化近似推算算法的实施,并构成软件开发的基础。这个方法可以将许多响应分布和处罚纳入反问题模型。尽管我们的分析限于一维和二维反应变量,但我们建立了一个基础设施,使基于消除变数之间薄弱互动的精简算法步骤能够扩展至反向的更高层面问题。由生物医学和考古问题驱动的图像处理应用被作为插图。