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Approximate Bayesian inference for large spatial datasets using predictive process models

机译:使用预测过程模型的大型空间数据集的近似贝叶斯推断

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摘要

The challenges of estimating hierarchical spatial models to large datasets are addressed. With the increasing availability of geocoded scientific data, hierarchical models involving spatial processes have become a popular method for carrying out spatial inference. Such models are customarily estimated using Markov chain Monte Carlo algorithms that, while immensely flexible, can become prohibitively expensive. In particular, fitting hierarchical spatial models often involves expensive decompositions of dense matrices whose computational complexity increases in cubic order with the number of spatial locations. Such matrix computations are required in each iteration of the Markov chain Monte Carlo algorithm, rendering them infeasible for large spatial datasets. The computational challenges in analyzing large spatial datasets are considered by merging two recent developments. First, the predictive process model is used as a reduced-rank spatial process, to diminish the dimensionality of the model. Then a computational framework is developed for estimating predictive process models using the integrated nested Laplace approximation. The settings where the first stage likelihood is Gaussian or non-Gaussian are discussed. Issues such as predictions and model comparisons are also discussed. Results are presented for synthetic data and several environmental datasets.
机译:解决了针对大型数据集估算分层空间模型的挑战。随着经过地理编码的科学数据的可用性不断提高,涉及空间过程的层次模型已成为执行空间推理的流行方法。通常使用马尔可夫链蒙特卡罗算法估算此类模型,尽管该算法极为灵活,但价格过高。特别地,拟合的分层空间模型通常涉及密集矩阵的昂贵分解,这些密集矩阵的计算复杂度随着空间位置的数量而按立方顺序增加。马尔可夫链蒙特卡洛算法的每次迭代都需要这样的矩阵计算,这使得它们对于大型空间数据集不可行。通过合并两个最新进展,可以考虑分析大型空间数据集时的计算难题。首先,将预测过程模型用作降级空间过程,以减少模型的维数。然后,开发了一个计算框架,以使用集成的嵌套拉普拉斯逼近法估算预测过程模型。讨论了第一阶段可能性为高斯或非高斯的设置。还讨论了诸如预测和模型比较之类的问题。给出了合成数据和几个环境数据集的结果。

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