Research of Support Vector Regression Algorithm Based on Granularity

Qing Lv, Xiaoming Han, Gang Xie, Gaowei Yan, Jun Xie
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Abstract

—A regression method of Support Vector Machines in the case of a large number of sample data. Hierarchies of various granularities for the data set are constructed by density clustering algorithm. In coarse-granularity level, abnormal sample data are excluded, while part of dense repeated samples are removed in fine-granularity level. After pretreating the sample set by the method mentioned above, Support Vector Regression is trained to construct a regression model. In this paper, the prediction model of coke mechanical strength is established by the means. The result indicates that Support Vector Regression Algorithm based on granularity has low computational complexity and high speed, moreover eliminating noise sample data and removing the dense samples do not affect the distribution and prediction effect of the original sample set. It is an effective measure of regression with the large sample data.
基于粒度的支持向量回归算法研究
-支持向量机在大量样本数据情况下的回归方法。采用密度聚类算法构建数据集的不同粒度层次结构。在粗粒度级别上,排除异常样本数据,在细粒度级别上,去除部分密集重复样本。用上述方法对样本集进行预处理后,训练支持向量回归,构建回归模型。本文利用该方法建立了焦炭机械强度的预测模型。结果表明,基于粒度的支持向量回归算法计算复杂度低、速度快,并且去除噪声样本数据和去除密集样本不影响原始样本集的分布和预测效果。它是大样本数据回归的一种有效方法。
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