Classification Based on Rules for the Study of Cotton Productivity in the State of Mato Grosso

A. Silva, C. Vaz, E. Ferreira, R. Galbieri
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Abstract

The advance of cotton farming in the Brazilian savannah boosted and made possible a highly technified, efficient and profitable production, elevating the country from the condition of cotton fiber importer in the 70s to one of the main exporters so far. Despite the increasing contribution of technologies such as transgenic cultivars, machines, inputs and more efficient data management, in recent years there has been a stagnation of cotton productivity in the State of Mato Grosso (MT). Data Mining (MD) techniques offer an excellent opportunity to assess this problem. Through the rules-based classification applied to a real database (BD) of cotton production in MT, factors were identified that were affecting and consequently limiting the increase in productivity. In the pre-processing of the data, we perform the attributes, selection, transformation and identification of outliers. Numerical attributes were discretized using automatic techniques: Kononenko (KO), Better Encoding (BE) and combination: KO + BE. In modeling the rule algorithms used were PART and JRip, both implemented in the WEKA tool. Performance was assessed using statistical metrics: accuracy, recall, cost and their combination using the I_FC index (created by the authors). Results showed better performance for the PART classifier, with discretization by the KO + BE technique, followed by binary conversion. The analysis of the rules made it possible to identify the attributes that most impact productivity. This article is an excerpt from an ICMC/USP Professional Master's Dissertation in Science carried out in São Carlos-SP/BR.
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基于规则的马托格罗索州棉花生产力分类研究
巴西大草原棉花种植的进步促进了技术含量高、效率高和利润高的生产,使巴西从70年代的棉纤维进口国一跃成为迄今为止的主要出口国之一。尽管转基因品种、机器、投入和更有效的数据管理等技术的贡献越来越大,但近年来马托格罗索州(MT)的棉花生产力一直停滞不前。数据挖掘(MD)技术为评估这个问题提供了一个极好的机会。通过将基于规则的分类应用于棉田棉花生产实际数据库(BD),确定了影响和限制生产力提高的因素。在数据的预处理中,我们进行了异常值的属性、选择、转换和识别。采用Kononenko (KO)、Better Encoding (BE)和KO + BE组合技术对数值属性进行离散化。在建模中使用的规则算法是PART和JRip,它们都是在WEKA工具中实现的。使用统计指标评估性能:准确性、召回率、成本及其使用I_FC指数(由作者创建)的组合。结果表明,采用KO + BE技术进行离散化,然后进行二值转换的PART分类器具有更好的性能。对规则的分析使识别最影响生产力的属性成为可能。本文节选自ICMC/USP专业硕士论文在 o Carlos-SP/BR进行的科学。
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