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CloudSVM: Training an SVM Classifier in Cloud Computing Systems

机译:CloudSVM:在云计算系统中训练SVM分类器

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In conventional distributed machine learning methods, distributed support vector machines (SVM) algorithms are trained over pre-configured intranet/internet environments to find out an optimal classifier. These methods are very complicated and costly for large datasets. Hence, we propose a method that is referred as the Cloud SVM training mechanism (CloudSVM) in a cloud computing environment with MapReduce technique for distributed machine learning applications. Accordingly, (ⅰ) SVM algorithm is trained in distributed cloud storage servers that work concurrently; (ⅱ) merge all support vectors in every trained cloud node; and (ⅲ) iterate these two steps until the SVM converges to the optimal classifier function. Single computer is incapable to train SVM algorithm with large scale data sets. The results of this study are important for training of large scale data sets for machine learning applications. We provided that iterative training of splitted data set in cloud computing environment using SVM will converge to a global optimal classifier in finite iteration size.
机译:在传统的分布式机器学习方法中,分布式支持向量机(SVM)算法在预先配置的Intranet / Internet环境中训练,以找出最佳分类器。对于大型数据集来说,这些方法非常复杂且昂贵。因此,我们提出了一种方法,该方法被称为云计算环境中的云SVM培训机制(CloudSVM),具有用于分布式机器学习应用的MapReduce技术。因此,(Ⅰ)SVM算法在分布式云存储服务器中培训,该服务器同时工作; (Ⅱ)在每个培训的云节点中合并所有支持向量; (Ⅲ)迭代这两个步骤直到SVM会聚到最佳分级器功能。单台计算机无法使用大规模数据集培训SVM算法。本研究的结果对于培训机器学习应用的大规模数据集是重要的。我们提供了使用SVM在云计算环境中设置的分割数据的迭代培训将收敛到有限迭代大小的全局最佳分类器。

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