模糊决策树在巴西咖啡锈病预警中的应用

M. E. Cintra, C. A. A. Meira, M. C. Monard, H. Camargo, L. Rodrigues
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引用次数: 39

摘要

本文提出将模糊决策树用于咖啡锈病预警,这是世界上最重要的咖啡病害。这些模型是利用8年的野外数据建立的。利用原始数据的不同属性子集,构建了三个不同的数据集。代表月感染率的类别属性根据两种不同的感染率构建了6个数据集。当估计的每月疾病感染率达到两个阈值之一时,可使用诱导模型触发警报。第一个阈值允许采取预防措施,而第二个阈值则需要采取治疗措施。根据专家的意见,将模糊决策树模型与经典决策树算法的模型进行了比较,考虑了模型的准确性和语法复杂性,以及模型的质量。模糊模型具有较好的准确率、可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of fuzzy decision trees for coffee rust warning in Brazilian crops
This paper proposes the use of fuzzy decision trees for coffee rust warning, the most economically important coffee disease in the world. The models were induced using field data collected during 8 years. Using different subsets of attributes from the original data, three distinct datasets were constructed. The class attribute, representing the monthly infection rate, was used to construct six datasets according to two distinct infection rates. Induced models can be used to trigger alerts when estimated monthly disease infection rates reach one of the two thresholds. The first threshold allows applying preventive actions, whereas the second one requires a curative action. The fuzzy decision tree models were compared to the ones induced by a classic decision tree algorithm, taking into account the accuracy and the syntactic complexity of the models, as well as its quality according to an expert opinion. The fuzzy models showed better accuracy power and interpretability.
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