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A sampling approach to estimate the log determinant used in spatial likelihood problems

机译:一种估计空间似然问题中使用的对数行列式的抽样方法

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摘要

Likelihood-based methods for modeling multivariate Gaussian spatial data have desirable statistical characteristics, but the practicality of these methods for massive georeferenced data sets is often questioned. A sampling algorithm is proposed that exploits a relationship involving log-pivots arising from matrix decompositions used to compute the log determinant term that appears in the model likelihood. We demonstrate that the method can be used to successfully estimate log-determinants for large numbers of observations. Specifically, we produce an log-determinant estimate for a 3,954,400 by 3,954,400 matrix in less than two minutes on a desktop computer. The proposed method involves computations that are independent, making it amenable to out-of-core computation as well as to coarse-grained parallel or distributed processing. The proposed technique yields an estimated log-determinant and associated confidence interval.
机译:基于模型的多元高斯空间数据建模方法具有令人满意的统计特征,但是这些方法对于大量地理参考数据集的实用性却经常受到质疑。提出了一种采样算法,该算法利用了涉及因矩阵分解而产生的对数轴的关系,该分解用于计算模型似然中出现的对数行列式项。我们证明该方法可用于成功地估计大量观测值的对数决定因素。具体来说,我们在台式计算机上用不到两分钟的时间就得出了一个3,954,400 x 3,954,400矩阵的对数行列式估计。所提出的方法涉及独立的计算,使其适合于核外计算以及粗粒度并行或分布式处理。所提出的技术产生估计的对数行列式和相关的置信区间。

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