二元高斯共分量模型的有效样本量

IF 0.9 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Stats Pub Date : 2023-10-08 DOI:10.3390/stats6040064
Letícia Ellen Dal Canton, Luciana Pagliosa Carvalho Guedes, Miguel Angel Uribe-Opazo, Tamara Cantu Maltauro
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引用次数: 0

摘要

有效样本量(ESS)由相同数量的地理参考变量的抽样单元组成,这将产生相同的抽样误差,因为它考虑了每个地理参考抽样单元包含的关于自身以及与其相邻抽样单元的关系的信息。该方法可为今后空间变异性实验的地理参考采样规划提供有用的信息。本文的目的是为ESS (ESSbi)开发一种二元方法,考虑二元高斯共同成分模型(BGCCM),该模型既考虑了两个变量之间的空间相关性,也考虑了个体空间关联。使用模拟研究或代数方法验证了影响单变量方法的所有属性,包括验证BGCCM公共范围参数对估计ESSbi值的影响的场景。将ESSbi应用于某农业区的实有机质(OM)和碱基和(SB)数据。研究发现,60%的OM-SB对样本观测包含空间冗余信息。在比较原始和简化的OM映射时,使用SB作为协变量,简化的样本配置通过保留空间变异性被证明是有效的。Tau一致性指数证实了地图之间的中等准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Sample Size with the Bivariate Gaussian Common Component Model
Effective sample size (ESS) consists of an equivalent number of sampling units of a georeferenced variable that would produce the same sampling error, as it considers the information that each georeferenced sampling unit contains about itself as well as in relation to its neighboring sampling units. This measure can provide useful information in the planning of future georeferenced sampling for spatial variability experiments. The objective of this article was to develop a bivariate methodology for ESS (ESSbi), considering the bivariate Gaussian common component model (BGCCM), which accounts both for the spatial correlation between the two variables and for the individual spatial association. All properties affecting the univariate methodology were verified for ESSbi using simulation studies or algebraic methods, including scenarios to verify the impact of the BGCCM common range parameter on the estimated ESSbi values. ESSbi was applied to real organic matter (OM) and sum of bases (SB) data from an agricultural area. The study found that 60% of the sample observations of the OM–SB pair contained spatially redundant information. The reduced sample configuration proved efficient by preserving spatial variability when comparing the original and reduced OM maps, using SB as a covariate. The Tau concordance index confirmed moderate accuracy between the maps.
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来源期刊
CiteScore
0.60
自引率
0.00%
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审稿时长
7 weeks
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