论文标题
比较两个空间变量与一致的概率
Comparing two spatial variables with the probability of agreement
论文作者
论文摘要
在比较两种工具或一种具有黄金标准的仪器时,计算两个连续序列之间的一致性在统计数据中引起了极大的兴趣。协议的可能性(PA)量化了两个感兴趣的变量之间的相似性,并且对于考虑什么构成实际上重要的差异很有用。在本文中,我们介绍了PA的概括用于处理空间变量。我们的建议使PA取决于空间滞后。结果,对于各向同性的固定和非平稳的空间过程,建立了PA衰减随距离滞后的函数的条件。估计是通过一阶近似来解决的,该近似保证了PA的样本版本的渐近正态性。相对于协方差参数,研究了PA的敏感性。描述和说明了涉及绿色色坐标(GCC)的秋季变化的真实数据,这是“绿色”的指数,该指数捕获了树叶的物落阶段,与生态系统的碳通量有关,并且是根据森林檐篷的重复图像估算的。
Computing the agreement between two continuous sequences is of great interest in statistics when comparing two instruments or one instrument with a gold standard. The probability of agreement (PA) quantifies the similarity between two variables of interest, and it is useful for accounting what constitutes a practically important difference. In this article we introduce a generalization of the PA for the treatment of spatial variables. Our proposal makes the PA dependent on the spatial lag. As a consequence, for isotropic stationary and nonstationary spatial processes, the conditions for which the PA decays as a function of the distance lag are established. Estimation is addressed through a first-order approximation that guarantees the asymptotic normality of the sample version of the PA. The sensitivity of the PA is studied for finite sample size, with respect to the covariance parameters. The new method is described and illustrated with real data involving autumnal changes in the green chromatic coordinate (Gcc), an index of "greenness" that captures the phenological stage of tree leaves, is associated with carbon flux from ecosystems, and is estimated from repeated images of forest canopies.