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Representing Multivariate Data by Optimal Colors to Uncover Events of Interest in Time Series Data

机译:通过最佳颜色表示多变量数据,以发现时间序列数据的兴趣事件

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In this paper, we present a visualization system for users to study multivariate time series data. They first identify trends or anomalies from a global view and then examine details in a local view. Specifically, we train a neural network to project high-dimensional data to a two dimensional (2D) planar space while retaining global data distances. By aligning the 2D points with a predefined color map, high-dimensional data can be represented by colors. Because perceptual color differentiation may fail to reflect data distance, we optimize perceptual color differentiation on each map region by deformation. The region with large perceptual color differentiation will expand, whereas the region with small differentiation will shrink. Since colors do not occupy any space in visualization, we convey the overview of multivariate time series data by a calendar view. Cells in the view are color-coded to represent multivariate data at different time spans. Users can observe color changes over time to identify events of interest. Afterward, they study details of an event by examining parallel coordinate plots. Cells in the calendar view and the parallel coordinate plots are dynamically linked for users to obtain insights that are barely noticeable in large datasets. The experiment results, comparisons, conducted case studies, and the user study indicate that our visualization system is feasible and effective.
机译:在本文中,我们为用户提供了一种可视化系统,以研究多变量时间序列数据。他们首先从全球范围内识别趋势或异常,然后在当地视图中检查细节。具体地,我们训练神经网络以将高维数据投影到二维(2D)平面空间,同时保持全局数据距离。通过将2D点与预定义的颜色图对准,高维数据可以由颜色表示。因为感知颜色分化可能无法反映数据距离,所以我们通过变形优化每个映射区域上的感知颜色差异化。具有大感知颜色分化的地区将扩大,而差异小的区域会缩小。由于颜色不占据可视化中的任何空间,因此我们通过日历视图传达多变量时间序列数据的概述。视图中的细胞被颜色编码以在不同时间跨度表示多变量数据。用户可以随时间观察颜色变化以识别感兴趣的事件。之后,他们通过检查并联坐标图来研究事件的细节。日历视图中的单元格和并行坐标图是动态链接的,以便用户在大型数据集中获得几乎不可思议的洞察力。实验结果,比较,进行案例研究,以及用户研究表明,我们的可视化系统是可行和有效的。

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