多维数据的可视化单簇

A. Khadidja, B. Nadjia, O. Saliha
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引用次数: 0

摘要

计算机工具的迅速发展使计算机系统能够存储大量具有许多参数的数据,如电子支付系统、传感器和监控系统等。我们从两个维度来讨论大型数据库:记录的数量和“属性、变量”的维度数量。同时,对这些数据的分析也变得非常重要和困难。可视化数据分析具有很大的应用潜力,因为它方便了分析、解释、验证,也增加了分析人员之间的认知方面。然而,传统的多维数据可视化技术,如平行坐标、字形和散点图矩阵,不能很好地扩展到非常大的数据集。数据集的规模和复杂性的增加是一个新的挑战,也是我们工作的关键动力。在本文中,我们提出了一种可以处理大数据的方法VSCDR (Visual Single Cluster Dimension Reduction approach)。
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Visual Single Cluster of multidimensional data
The rapid development of computer tools allows the computer system to stoke very large amount of data with many parameters such as electronic payment systems, sensors and monitoring systems and other. We talk about large data bases along both dimensions: number of recordings and number of dimensions "attribute, variable". Analysis of these data becomes very important and difficult in the same time. The visual data analysis has great potential applications because it facilitates the analysis, interpretation, validation and also increases the cognitive aspect among analysts. However, the traditional techniques of visualization of multidimensional data, such as parallel coordinates, glyphs, and scatter plot matrices, do not scale well to a very large data set. The increasing size and complexity of data sets is a new challenge and a key motivation for our works. In this article, we present our proposal approach VSCDR (Visual Single Cluster Dimension Reduction Approach) that can handle with big data.
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