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A parameter selection of support vector machine with genetic algorithm for citrus quality classification

机译:基于遗传算法的柑橘品质分类支持向量机参数选择。

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Citrus quality classification is an important and widely studied topic since it has significant role in its market price determination. Due to citrus quality indicators series nonlinearity and no-stationary, the accuracy of conventional mostly used methods including linear discriminant analysis, K-means clustering and neural network has been limited. The use of support vector machine (SVM) has been shown to be an effective technology to solve classification problem of nonlinearity and small sample. However, the practicability of SVM is effected due to the difficulty of selecting appropriate SVM parameters. This paper presents a hybrid approach of support vector machine with genetic algorithm (GA) optimization to determine SVM free parameters for developing the accuracy of classification. The approach is applied to classify citrus quality of three gorges reservoir, China. The results indicate that the approach can give a better quality comprehensive evaluation, and has a high potential to become a useful tool in agriculture.
机译:柑橘质量分类是一个重要且广泛研究的话题,因为它在其市场价格确定中具有重要作用。由于柑橘质量指标系列非线性且不稳定,传统的常用方法(包括线性判别分析,K均值聚类和神经网络)的准确性受到限制。支持向量机(SVM)的使用已被证明是解决非线性和小样本分类问题的有效技术。但是,由于难以选择适当的SVM参数,因此SVM的实用性受到影响。本文提出了一种支持向量机与遗传算法(GA)优化的混合方法,以确定支持向量机的自由参数,以提高分类的准确性。该方法用于对中国三峡水库柑桔的质量进行分类。结果表明,该方法可以提供更好的质量综合评价,并具有成为农业有用工具的巨大潜力。

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