首页> 外文期刊>Catena: An Interdisciplinary Journal of Soil Science Hydrology-Geomorphology Focusing on Geoecology and Landscape Evolution >At the interface between domain knowledge and statistical sampling theory: Conditional distribution based sampling for environmental survey (CODIBAS)
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At the interface between domain knowledge and statistical sampling theory: Conditional distribution based sampling for environmental survey (CODIBAS)

机译:在域知识与统计采样理论之间的界面处:基于环境调查(Codibas)的条件分布采样

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摘要

In environmental research, there is an extensive knowledge of the underlying processes that cause a distinct spatial landscape pattern of system properties. Statistical sampling theory deals with how a dataset must be constructed that allows for the transferability of the insights from the collected data to the system. Stratified and balanced sampling schemes applied for environmental survey, seek to reduce the necessary amount of data to capture the spatial heterogeneity of a landscape. The particular design's specification depends on the field of application. Against this background, the author strives to draw the attention to the conceptual shortcomings of conditioned Latin hypercube sampling (cLHS) in the context of soil survey and digital soil mapping. Furthermore, a new sampling design is presented which (1) combines the advantages of both, stratified and balanced designs, (2) shows consistency in the application of pedogenetic theory, and (3) which can be obtained by some simple modifications to the computer code of cLHS. Overall, this manuscript shall promote a vivid discussion in the Pedometrics community concerning the consideration of scientific domain knowledge in statistical sampling theory.
机译:在环境研究中,对潜在流程的广泛知识,导致系统性质的不同空间景观格局。统计采样理论涉及如何构造数据集,其允许从收集的数据到系统的洞察力的可转换性。适用于环境调查的分层和平衡采样方案,寻求减少必要的数据量,以捕获景观的空间异质性。特定设计的规范取决于应用领域。在此背景下,作者努力提请注意土壤调查和数字土壤映射的条件拉丁超级采样(CLHS)的概念性缺点。此外,介绍了一种新的采样设计,(1)结合了分层和平衡设计的优点,(2)显示了应用基础理论的应用中的一致性,(3)可以通过对计算机的一些简单修改来获得Clhs的代码。总体而言,此稿件应在统计采样理论中审议科学域知识的思考,促进对小型识别社区的生动讨论。

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