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Main Authors: Wang, Jinfeng, Haining, Robert, Zhang, Tonglin, Xu, Chengdong, Hu, Maogui
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2211.16918
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author Wang, Jinfeng
Haining, Robert
Zhang, Tonglin
Xu, Chengdong
Hu, Maogui
author_facet Wang, Jinfeng
Haining, Robert
Zhang, Tonglin
Xu, Chengdong
Hu, Maogui
contents Spatial statistics is dominated by spatial autocorrelation (SAC) based Kriging and BHM, and spatial local heterogeneity based hotspots and geographical regression methods, appraised as the first and second laws of Geography (Tobler 1970; Goodchild 2004), respectively. Spatial stratified heterogeneity (SSH), the phenomena of a partition that within strata is more similar than between strata, examples are climate zones and landuse classes and remote sensing classification, is prevalent in geography and understood since ancient Greek, is surprisingly neglected in Spatial Statistics, probably due to the existence of hundreds of classification algorithms. In this article, we go beyond the classifications and disclose that SSH is the sources of sample bias, statistic bias, modelling confounding and misleading CI, and recommend robust solutions to overcome the negativity. In the meantime, we elaborate four benefits from SSH: creating identical PDF or equivalent to random sampling in stratum; the spatial pattern in strata, the borders between strata as a specific information for nonlinear causation; and general interaction by overlaying two spatial patterns. We developed the equation of SSH and discuss its context. The comprehensive investigation formulates the statistics for SSH, presenting a new principle and toolbox in spatial statistics.
format Preprint
id arxiv_https___arxiv_org_abs_2211_16918
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Statistics for Spatially Stratified Heterogeneous Data
Wang, Jinfeng
Haining, Robert
Zhang, Tonglin
Xu, Chengdong
Hu, Maogui
Methodology
Spatial statistics is dominated by spatial autocorrelation (SAC) based Kriging and BHM, and spatial local heterogeneity based hotspots and geographical regression methods, appraised as the first and second laws of Geography (Tobler 1970; Goodchild 2004), respectively. Spatial stratified heterogeneity (SSH), the phenomena of a partition that within strata is more similar than between strata, examples are climate zones and landuse classes and remote sensing classification, is prevalent in geography and understood since ancient Greek, is surprisingly neglected in Spatial Statistics, probably due to the existence of hundreds of classification algorithms. In this article, we go beyond the classifications and disclose that SSH is the sources of sample bias, statistic bias, modelling confounding and misleading CI, and recommend robust solutions to overcome the negativity. In the meantime, we elaborate four benefits from SSH: creating identical PDF or equivalent to random sampling in stratum; the spatial pattern in strata, the borders between strata as a specific information for nonlinear causation; and general interaction by overlaying two spatial patterns. We developed the equation of SSH and discuss its context. The comprehensive investigation formulates the statistics for SSH, presenting a new principle and toolbox in spatial statistics.
title Statistics for Spatially Stratified Heterogeneous Data
topic Methodology
url https://arxiv.org/abs/2211.16918