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Variational Bayesian methods for spatial data analysis

机译:空间数据分析的变分贝叶斯方法

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摘要

With scientific data available at geocoded locations, investigators are increasingly turning to spatial process models for carrying out statistical inference. However, fitting spatial models often involves expensive matrix decompositions, whose computational complexity increases in cubic order with the number of spatial locations. This situation is aggravated in Bayesian settings where such computations are required once at every iteration of the Markov chain Monte Carlo (MCMC) algorithms. In this paper, we describe the use of Variational Bayesian (VB) methods as an alternative to MCMC to approximate the posterior distributions of complex spatial models. Variational methods, which have been used extensively in Bayesian machine learning for several years, provide a lower bound on the marginal likelihood, which can be computed efficiently. We provide results for the variational updates in several models especially emphasizing their use in multivariate spatial analysis. We demonstrate estimation and model comparisons from VB methods by using simulated data as well as environmental data sets and compare them with inference from MCMC.
机译:随着在地理编码位置可用的科学数据,研究人员越来越多地转向空间过程模型来进行统计推断。但是,拟合空间模型通常涉及昂贵的矩阵分解,矩阵分解的计算复杂度随着空间位置数量的增加而呈立方顺序增加。这种情况在贝叶斯设置中更加严重,因为在每次马尔可夫链蒙特卡洛(MCMC)算法的迭代中都需要进行此类计算。在本文中,我们描述了使用变分贝叶斯(VB)方法替代MCMC来近似复杂空间模型的后验分布。在贝叶斯机器学习中已经广泛使用了数年的变分方法,它为边际可能性提供了一个下限,可以有效地计算它。我们提供了几种模型中变量更新的结果,尤其强调了它们在多元空间分析中的使用。我们通过使用模拟数据以及环境数据集演示了VB方法的估计和模型比较,并将它们与MCMC的推论进行了比较。

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