Multi-Class Classification of Agricultural Data Based on Random Forest and Feature Selection

Lei Shi, Yaqian Qin, Juanjuan Zhang, Yan Wang, H. Qiao, Haiping Si
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Abstract

Agricultural production and operation produce a large amount of data, which hides valuable knowledge. Data mining technology can effectively explore the connection between various factors from the massive agricultural data. Classification prediction is one of the most valuable agricultural data mining techniques. This paper presents a new algorithm consisting of machine learning algorithms, feature ranking method and instance filter, which aims to enhance the capability of the random forest algorithm and better solve the problem of agricultural multi-class classification. The performance of the new algorithm was tested by using four standard agricultural multi-class datasets, and the experimental results showed that the newly proposed method performed well on all datasets. Among them, substantial rise in classification accuracy is observed for Eucalyptus dataset. Applying random forest algorithm on Eucalyptus dataset results in classification accuracy as 53.4% and after applying the new algorithm (rough set) the classification accuracy significantly increases to 83.7%.
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基于随机森林和特征选择的农业数据多类分类
农业生产经营产生大量的数据,这些数据中隐藏着有价值的知识。数据挖掘技术可以有效地从海量的农业数据中挖掘各种因素之间的联系。分类预测是最有价值的农业数据挖掘技术之一。为了提高随机森林算法的性能,更好地解决农业多类分类问题,本文提出了一种由机器学习算法、特征排序方法和实例滤波组成的新算法。利用4个标准农业多类数据集对新算法的性能进行了测试,实验结果表明,新算法在所有数据集上都具有良好的性能。其中,桉树数据集的分类精度显著提高。在Eucalyptus数据集上应用随机森林算法的分类准确率为53.4%,应用新算法(粗糙集)后,分类准确率显著提高到83.7%。
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