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首页> 外文期刊>Stochastic environmental research and risk assessment >Conditional simulation of categorical spatial variables using Gibbs sampling of a truncated multivariate normal distribution subject to linear inequality constraints
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Conditional simulation of categorical spatial variables using Gibbs sampling of a truncated multivariate normal distribution subject to linear inequality constraints

机译:截断多变量正态分布的GIBBS采样进行分类空间变量的条件模拟,以线性不等式约束

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摘要

This paper introduces a method to generate conditional categorical simulations, given an ensemble of partially conditioned (or unconditional) categorical simulations derived from any simulation process. The proposed conditioning method relies on implicit functions (signed distance functions) for representing the categorical spatial variable of interest. Thus, the conditioning problem is reformulated in terms of signed distance functions. The proposed approach combines aspects of principal component analysis and Gibbs sampling to achieve the conditioning of the unconditional categorical realizations to the data. It is applied to synthetic and real-world datasets and compared to the traditional sequential indicator simulation. It appears that the proposed simulation technique is an effective method to generate conditional categorical simulations from a set of unconditional categorical simulations.
机译:本文介绍了一种生成条件分类模拟的方法,给定源自任何模拟过程的部分条件(或无条件)分类模拟的集合。所提出的调节方法依赖于表示感兴趣的分类空间变量的隐式功能(符号距离函数)。因此,在符号距离函数方面重新重新重新重建调节问题。该方法结合了主成分分析和GIBBS采样的各个方面,以实现对数据的无条件分类实现的调理。它适用于合成和现实世界数据集,并与传统的连续指示器仿真相比。似乎所提出的仿真技术是一种有效的方法,可以从一组无条件分类模拟生成条件分类模拟。

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