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STAC: Enhancing stacked graphs for time series analysis

机译:STAC:增强堆叠图以进行时间序列分析

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Stacked graphs have been widely used to represent multiple time series simultaneously to show the changes of individual values and their aggregation over time. However, when the number of time series becomes very large, the layers representing time series with small values take up only very small proportions in the stacked graph, making them hard to trace. As a result, it is challenging for analysts to detect the correlation of individual layers and their aggregation, and find trend similarities and differences between layers solely with stacked graphs. In this paper, we study the correlations of individual layers, and their aggregation in time series data presented with stacked graphs, focusing on the local regions within any given time intervals. Specifically, we present STAC, an interactive visual analytics system, to help analysts gain insights into the correlations in stacked graphs. While preserving the original stacked shape, we further link a stacked graph with auxiliary views to facilitate the in-depth analysis of correlations in time series data. A case study based on a real-world dataset demonstrates the effectiveness of our system in gaining insights into time series data analysis and facilitating various analytical tasks.
机译:堆叠图已被广泛用于同时表示多个时间序列,以显示各个值的变化及其聚集随时间的变化。但是,当时间序列的数量变得很大时,表示时间序列的值较小的图层在堆叠图中只占很小的比例,从而使其难以追踪。因此,对于分析人员来说,要检测各个层及其聚合的相关性,并仅通过堆叠图来发现层之间的趋势相似性和差异,就具有挑战性。在本文中,我们研究了各个图层的相关性,以及它们在以堆叠图表示的时间序列数据中的聚合情况,重点是在任何给定时间间隔内的局部区域。具体来说,我们提供了一种交互式视觉分析系统STAC,以帮助分析人员深入了解堆叠图中的相关性。在保留原始堆叠形状的同时,我们进一步将堆叠图与辅助视图链接在一起,以促进对时序数据中相关性的深入分析。基于现实世界数据集的案例研究证明了我们的系统在获得对时序数据分析的洞察力并促进各种分析任务方面的有效性。

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