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A Clustering-based Sales Forecasting Scheme Using Support Vector Regression for Computer Server

机译:基于支持向量回归的计算机服务器基于集群的销售预测方案

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In this study, a clustering-based sales forecasting scheme based on support vector regression (SVR) is proposed. The proposed scheme first uses k-means algorithm to partition the whole training sales data into several disjoint clusters. Then, for each group, the SVR is applied to construct forecasting model. Finally, for a given testing data, three similarity measurements are used to find the cluster which the testing data belongs to and then employee the corresponding trained SVR model to generate prediction result. A real aggregate sales data of computer server is used as an illustrative example to evaluate the performance of the proposed model. Experimental results revealed that the proposed clustering-based sales forecasting scheme outperforms the single SVR without data clustering and hence is an effective alternative for computer server sales forecasting.
机译:在这项研究中,提出了一种基于支持向量回归(SVR)的基于聚类的销售预测方案。提出的方案首先使用k-means算法将整个培训销售数据划分为几个不相交的簇。然后,对于每个组,将SVR应用于构建预测模型。最后,对于给定的测试数据,使用三个相似性度量来找到测试数据所属的集群,然后使用相应的训练有素的SVR模型生成预测结果。使用计算机服务器的真实汇总销售数据作为说明性示例,以评估所提出模型的性能。实验结果表明,所提出的基于聚类的销售预测方案优于没有数据聚类的单个SVR,因此是计算机服务器销售预测的有效替代方案。

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