A parallel Hyper-Surface Classifier for high dimensional data

Qing He, Qun Wang, Changying Du, Xu-Dong Ma, Zhong-zhi Shi
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引用次数: 4

Abstract

The enlarging volumes of data resources produced in real world makes classification of very large scale data a challenging task. Therefore, parallel process of very large high dimensional data is very important. Hyper-Surface Classification (HSC) is approved to be an effective and efficient classification algorithm to handle two and three dimensional data. Though HSC can be extended to deal with high dimensional data with dimension reduction or ensemble techniques, it is not trivial to tackle high dimensional data directly. Inspired by the decision tree idea, an improvement of HSC is proposed to deal with high dimensional data directly in this work. Furthermore, we parallelize the improved HSC algorithm (PHSC) to handle large scale high dimensional data based on MapReduce framework, which is a current and powerful parallel programming technique used in many fields. Experimental results show that the parallel improved HSC algorithm not only can directly deal with high dimensional data, but also can handle large scale data set. Furthermore, the evaluation criterions of scaleup, speedup and sizeup validate its efficiency.
高维数据的并行超表面分类器
现实世界中产生的数据资源数量不断增加,使得超大规模数据的分类成为一项具有挑战性的任务。因此,超大规模高维数据的并行处理是非常重要的。超表面分类(HSC)被认为是处理二维和三维数据的一种有效的分类算法。虽然HSC可以通过降维或集成技术扩展到处理高维数据,但直接处理高维数据并非易事。在决策树思想的启发下,本文提出了一种改进的HSC方法来直接处理高维数据。此外,我们将改进的HSC算法(PHSC)并行化,以处理基于MapReduce框架的大规模高维数据,这是目前在许多领域应用的一种强大的并行编程技术。实验结果表明,并行改进的HSC算法不仅可以直接处理高维数据,而且可以处理大规模数据集。通过放大、加速和缩小的评价指标验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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