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首页> 外文期刊>Stochastic environmental research and risk assessment >An Information-fusion Method To Identify Pattern Of Spatial Heterogeneity For Improving The Accuracy Of Estimation
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An Information-fusion Method To Identify Pattern Of Spatial Heterogeneity For Improving The Accuracy Of Estimation

机译:一种识别空间异质性模式的信息融合方法,以提高估计的准确性

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While spatial autocorrelation is used in spatial sampling survey to improve the precision of the feature's estimate of a certain population at area units, spatial heterogeneity as the stratification frame in survey also often have a considerable effect upon the precision. Under the context of increasingly enriched spatiotemporal data, this paper suggests an information-fusion method to identify pattern of spatial heterogeneity, which can be used as an informative stratification for improving the estimation accuracy. Data mining is major analysis components in our method: multivariate statistics, association analysis, decision tree and rough set are used in data filter, identification of contributing factors, and examination of relationship; classification and clustering are used to identify pattern of spatial heterogeneity using the auxiliary variables relevant to the goal and thus to stratify the samples. These methods are illustrated and examined in the case study of the cultivable land survey in Shandong Province in China. Different from many stratification schemes which just uses the goal variable to stratify which is too simplified, information from multiple sources can be fused to identify pattern of spatial heterogeneity, thus stratifying samples at geographical units as an informative polygon map, and thereby to increase the precision of estimates in sampling survey, as demonstrated in our case research.
机译:虽然在空间采样调查中使用空间自相关来提高以面积为单位的某个总体的特征估计的精度,但作为调查中的分层框架的空间异质性通常也对精度产生相当大的影响。在时空数据日益丰富的背景下,本文提出了一种信息融合方法来识别空间异质性模式,该方法可作为信息分层,以提高估计精度。数据挖掘是我们方法中的主要分析组件:在数据过滤器,影响因素的识别和关系检查中使用多元统计,关联分析,决策树和粗糙集。分类和聚类用于使用与目标相关的辅助变量来识别空间异质性模式,从而对样本进行分层。在山东省耕地调查的案例研究中对这些方法进行了说明和检验。与许多仅使用目标变量进行分层的分层方案(过于简化)不同,可以融合来自多个来源的信息以识别空间异质性模式,从而将地理单位处的样本分层为信息多边形图,从而提高精度正如我们的案例研究所证明的那样,在抽样调查中估算了多少。

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