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A Recursive Model-Reduction Method for Approximate Inference in Gaussian Markov Random Fields

机译:高斯马尔可夫随机场中近似推断的递归模型约简方法

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This paper presents recursive cavity modeling—a principled, tractable approach to approximate, near-optimal inference for large Gauss–Markov random fields. The main idea is to subdivide the random field into smaller subfields, constructing cavity models which approximate these subfields. Each cavity model is a concise, yet faithful, model for the surface of one subfield sufficient for near-optimal inference in adjacent subfields. This basic idea leads to a tree-structured algorithm which recursively builds a hierarchy of cavity models during an “upward pass” and then builds a complementary set of blanket models during a reverse “downward pass.” The marginal statistics of individual variables can then be approximated using their blanket models. Model thinning plays an important role, allowing us to develop thinned cavity and blanket models thereby providing tractable approximate inference. We develop a maximum-entropy approach that exploits certain tractable representations of Fisher information on thin chordal graphs. Given the resulting set of thinned cavity models, we also develop a fast preconditioner, which provides a simple iterative method to compute optimal estimates. Thus, our overall approach combines recursive inference, variational learning and iterative estimation. We demonstrate the accuracy and scalability of this approach in several challenging, large-scale remote sensing problems.
机译:本文介绍了递归型腔建模,这是一种针对大高斯-马尔可夫随机场的近似,接近最优推理的有原则的,易于处理的方法。主要思想是将随机场细分为较小的子场,构建近似这些子场的空腔模型。每个腔模型都是一个简洁但忠实的模型,用于一个子场的表面,足以在相邻子场中进行接近最佳的推理。这个基本思想导致了一种树状结构的算法,该算法在“向上通过”过程中递归地构建空腔模型的层次结构,然后在反向“向下通过”过程中构建互补的毯子模型集。然后,可以使用其一揽子模型来估算各个变量的边际统计量。模型细化起着重要作用,它使我们能够开发变薄的腔体和毯子模型,从而提供易于处理的近似推断。我们开发了一种最大熵方法,该方法利用细弦图上Fisher信息的某些易处理表示形式。给定薄腔模型的结果集,我们还开发了一种快速预处理器,该预处理器提供了一种简单的迭代方法来计算最佳估计。因此,我们的整体方法结合了递归推理,变分学习和迭代估计。我们在一些具有挑战性的大规模遥感问题中证明了这种方法的准确性和可扩展性。

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