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Exploring Large Scale Time-series Data Using Nested Timelines

机译:使用嵌套时间线探索大规模时间序列数据

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When data analysts study time-series data, an important task is to discover how data patterns change over time. If the dataset is very large, this task becomes challenging. Researchers have developed many visualization techniques to help address this problem. However, little work has been done regarding the changes of multivariate patterns, such as linear trends and clusters, on time-series data. In this paper, we describe a set of history views to fill this gap. This technique works under two modes: merge and non-merge. For the merge mode, merge algorithms were applied to selected time windows to generate a change-based hierarchy. Contiguous time windows having similar patterns are merged first. Users can choose different levels of merging with the tradeoff between more details in the data and less visual clutter in the visualizations. In the non-merge mode, the framework can use natural hierarchical time units or one defined by domain experts to represent timelines. This can help users navigate across long time periods. Grid-based views were designed to provide a compact overview for the history data. In addition, MDS pattern starfields and distance maps were developed to enable users to quickly investigate the degree of pattern similarity among different time periods. The usability evaluation demonstrated that most participants could understand the concepts of the history views correctly and finished assigned tasks with a high accuracy and relatively fast response time.
机译:当数据分析师研究时间序列数据时,一项重要任务是发现数据模式如何随时间变化。如果数据集非常大,则此任务将具有挑战性。研究人员开发了许多可视化技术来帮助解决此问题。但是,关于时间序列数据的多元模式(例如线性趋势和聚类)的变化,工作还很少。在本文中,我们描述了一组历史视图来填补这一空白。此技术在两种模式下起作用:合并和非合并。对于合并模式,将合并算法应用于选定的时间窗口,以生成基于更改的层次结构。具有相似模式的连续时间窗口将首先合并。用户可以选择不同级别的合并,并在数据中的更多细节与可视化中的视觉混乱程度之间进行权衡。在非合并模式下,框架可以使用自然的分层时间单位或由领域专家定义的时间单位来表示时间轴。这可以帮助用户长时间导航。基于网格的视图旨在提供历史数据的紧凑概述。此外,还开发了MDS模式星空图和距离图,以使用户能够快速调查不同时间段之间的模式相似度。可用性评估表明,大多数参与者可以正确理解历史视图的概念,并且可以以较高的准确度和相对较快的响应时间完成分配的任务。

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