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Study on a Pattern Classification Method of Soil Quality Based on Simplified Learning Sample Dataset

机译:基于简化学习样本数据集的土壤质量模式分类方法研究

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Based on the massive soil information in current soil quality grade evaluation, this paper constructed an intelligent classification approach of soil quality grade depending on classical sampling techniques and disordered multiclassification Logistic regression model. As a case study to determine the learning sample capacity under certain confidence level and estimation accuracy, and use c-means algorithm to automatically extract the simplified learning sample dataset from the cultivated soil quality grade evaluation database for the study area, Long chuan county in Guangdong province, a disordered Logistic classifier model was then built and the calculation analysis steps of soil quality grade intelligent classification were given. The result indicated that the soil quality grade can be effectively learned and predicted by the extracted simplified dataset through this method, which changed the traditional method for soil quality grade evaluation.
机译:基于当前土壤质量等级评价中的大量土壤信息,构建了基于经典采样技术和无序多分类Logistic回归模型的土壤质量等级智能分类方法。作为确定一定置信度和估计精度下的学习样本容量的案例研究,并使用c-means算法从广东龙川县研究区耕地质量等级评估数据库中自动提取简化的学习样本数据集然后,建立了一个无序的Logistic分类器模型,给出了土壤质量等级智能分类的计算分析步骤。结果表明,通过该方法提取的简化数据集可以有效地学习和预测土壤质量等级,从而改变了传统的土壤质量等级评价方法。

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