基于统计形状分析的时间序列数据变化可视化

Y. Shirota, R. F. Sari, Alfan Presekal, T. Hashimoto
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引用次数: 0

摘要

当我们分析大数据时,可视化是非常有效的。当我们处理长时间的时间序列数据时,尤其需要可视化。在本文中,我们将用形状来说明时间序列数据的整体趋势变化。我们采用的方法是统计形状分析,可以从变形中提取仿射和非仿射变换。该方法还有助于查看每个数据样本与其他相邻数据样本的局部移动情况。在本文中,我们利用印度尼西亚各省对总生育率和五岁以下儿童死亡率的比较说明了整个趋势变化。从可视化中,我们发现数据之间的关系一直比较稳定,呈线性关系,最终在2012年。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualization of Time Series Data Change by Statistical Shape Analysis
Visualization is very effective when we analyze the big data. When we handle with time series data for a long period, especially visualization is needed. In the paper, we shall illustrate change of the whole trend on time series data as shapes. The method we used is statistical shape analysis which can extract the Affine and non-Affine transformations from the deformation. The method is also helpful to see a local movement of each data sample, compared to other neighbors. In the paper, we illustrate the whole trend change using the Indonesia province comparison concerning the total fertility rate and the under five mortality rate. From the visualization, we found that the relationship between the data have been relatively stable and shows a linear relationship, finally in 2012.
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