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An online classification algorithm for large scale data streams: iGNGSVM

机译:大规模数据流的在线分类算法:iGNGSVM

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Stream Processing has recently become one of the current commercial trends to face huge amounts of data. However, normally these techniques need specific infrastructures and high resources in terms of memory and computing nodes. This paper shows how mini-batch techniques and topology extraction methods can help making gigabytes of data to be manageable for just one server using computationally costly Machine Learning techniques as Support Vector Machines. The algorithm iGNGSVM is proposed to improve the performance of Support Vector Machines in datasets where the data is continuously arriving. It is benchmarked against a mini-batch version of LibSVM, achieving good accuracy rates and performing faster than this. (C) 2017 Elsevier B.V. All rights reserved.
机译:流处理最近已成为面对大量数据的当前商业趋势之一。但是,就内存和计算节点而言,这些技术通常需要特定的基础结构和大量资源。本文展示了如何使用计算成本高昂的机器学习技术作为支持向量机,利用小批量技术和拓扑提取方法,使仅一台服务器就可以管理千兆字节的数据。提出了iGNGSVM算法,以提高支持向量机在数据不断到达的数据集中的性能。它以LibSVM的小批量版本为基准,实现了较高的准确率,并且执行速度更快。 (C)2017 Elsevier B.V.保留所有权利。

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