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Application of distributed SVM architectures in classifying forest data cover types

机译:分布式SVM架构在森林数据覆盖类型分类中的应用

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摘要

In many 'real-world' applications, a classification of large data sets, which are often also imbalanced, is difficult due to the small, but usually more interesting classes. In this study, a large data set, forest cover type classes, which is actually multi-class classification defined with seven imbalanced classes and used as a resource inventory information was analyzed and evaluated. The data set was transformed into seven new data sets and a support vector machine (SVM) was employed to solve a binary classification problem of balanced and imbalanced data sets with various sizes. In the two approaches considered, the use of distributed SVM architectures, which basically reduces the complexity of the quadratic optimization problem of very large data sets, and the use of two sampling approaches for classification of imbalanced data sets were combined and results presented. The experimental results of distributed SVM architectures show the improvement of the accuracy for larger data sets in comparison to a single SVM classifier and their ability to improve the correct classification of the minority class.
机译:在许多“现实世界”应用程序中,由于数据集较小但通常更有趣,因此很难对大型数据集进行分类(通常也不平衡)。在这项研究中,分析和评估了一个大型数据集,即森林覆盖类型类别,该类别实际上是由七个不平衡类别定义的多类别分类,并用作资源清单信息。将该数据集转换为七个新数据集,并使用支持向量机(SVM)解决具有各种大小的平衡和不平衡数据集的二进制分类问题。在考虑的两种方法中,使用分布式SVM体系结构从根本上降低了非常大数据集的二次优化问题的复杂性,并结合使用了两种采样方法对不平衡数据集进行分类,并给出了结果。分布式SVM架构的实验结果表明,与单个SVM分类器相比,较大数据集的准确性有所提高,并且它们具有改进少数类正确分类的能力。

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