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Rough Set Rule Induction for Suitability Assessment

机译:适用性评估的粗糙集规则归纳

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The data that characterize an environmentai system are a fundamental part of an environmental decision-support system. However, obtaining complete and consistent data sets for regional studies can be difficult. Data sets are often available only for small study areas within the region, whereas the data themselves contain uncertainty because of system complexity, differences in methodology, or data collection errors. This paper presents rough-set rule induction as one way to deal with data uncertainty while creating predictive if-then rules that generalize data values to the entire region. The approach is illustrated by determining the crop suitability of 14 crops for the agricultural soils of the Willamette River Basin, Oregon, USA, To implement this method, environmental and crop yield data were spatially related to individual soil units, forming the examples needed for the rule induction process. Next, four learning algorithms were defined by using different subsets of environmental attributes. ROSETTA, a software system for rough set analysis, was then used to generate rules using each algorithm. Cross-validation analysis showed that all crops had at least one algorithm with an accuracy rate greater than 68 percent. After selecting a preferred algorithm, the induced classifier was used to predict the crop suitability of each crop for the unclassified soils. The results suggest that rough set rule induction is a useful method for data generalization and suitability analysis.
机译:表征环境系统的数据是环境决策支持系统的基本部分。但是,很难获得用于区域研究的完整且一致的数据集。数据集通常仅适用于该区域内的小型研究区域,而数据本身由于系统复杂性,方法差异或数据收集错误而具有不确定性。本文介绍了粗糙集规则归纳法,这是处理数据不确定性的一种方法,同时可以创建预测性if-then规则,从而将数据值推广到整个区域。通过确定美国俄勒冈州威拉米特河流域的14种农作物对农用土壤的适宜性来说明该方法。为实施此方法,环境和农作物产量数据在空间上与各个土壤单元相关,形成了所需的实例。规则归纳过程。接下来,使用不同的环境属性子集定义了四种学习算法。然后使用ROSETTA(用于粗糙集分析的软件系统)使用每种算法生成规则。交叉验证分析表明,所有农作物均至少具有一种算法,准确率大于68%。在选择了首选算法后,使用诱导分类器来预测每种农作物对未分类土壤的适宜性。结果表明,粗糙集规则归纳法是一种有用的数据归纳和适用性分析方法。

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