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Comparing three methods for modeling the uncertainty in knowledge discovery from area-class soil maps

机译:比较三种建模区域类土壤图知识发现不确定性的方法

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摘要

Knowledge discovery has been demonstrated as an effective approach to extracting knowledge from existing data sources for soil classification and mapping. Soils are spatial entities with fuzzy boundaries. Our study focuses on the uncertainty associated with class assignments when classifying such entities. We first present a framework of knowledge representation for categorizing spatial entities with fuzzy boundaries. Three knowledge discovery methods are discussed next for extracting knowledge from data sources. The methods were designed to maintain information for modeling the uncertainties associated with class assignments when using the extracted knowledge for classification. In a case study of knowledge discovery from an area-class soil map, all three methods were able to extract knowledge embedded in the map to classify soils at accuracies comparable to that of the original map. The methods were also able to capture membership gradations and helped to identify transitional zones and areas of potential problems on the source map when measures of uncertainties were mapped. Among the three methods compared, a fuzzy decision tree approach demonstrated the best performance in modeling the transitions between soil prototypes.
机译:事实证明,知识发现是从现有数据源中提取知识用于土壤分类和制图的有效方法。土壤是具有模糊边界的空间实体。我们的研究集中在对此类实体进行分类时,与班级分配相关的不确定性。我们首先提出一个知识表示框架,用于对具有模糊边界的空间实体进行分类。接下来讨论三种知识发现方法,用于从数据源中提取知识。这些方法旨在维护信息,以便在使用提取的知识进行分类时对与班级分配相关的不确定性进行建模。在一个区域级土壤图的知识发现案例研究中,所有三种方法都能够提取嵌入在图上的知识,从而以与原始图相当的精度对土壤进行分类。这些方法还能够捕获成员资格等级,并有助于在绘制不确定性度量时在源图上标识出过渡区域和潜在问题区域。在比较的三种方法中,模糊决策树方法在对土壤原型之间的转换进行建模时表现出最佳性能。

著录项

  • 来源
    《Computers & geosciences》 |2011年第9期|p.1425-1436|共12页
  • 作者

    Feng Qi; A-Xing Zhu;

  • 作者单位

    Department of Geology and Meteorology, Kean University, J000 Morris Ave. Union, NJ 07083, USA;

    State Key Laboratory of Resources and Environmental Information System, Institute of Geographical Sciences and Natural Resources Research, Chinese Academy of Sciences Building 917, Datun Road, An Wai. Beijing 100101, China,Department of Geography. University of Wisconsin-Madison, 550 North Park Street, Madison, Wl 53706, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    knowledge discovery; uncertainty; fuzzy; prototype theory; soil classification;

    机译:知识发现;不确定;模糊;原型理论土壤分类;

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