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NetScatter: Visual analytics of multivariate time series with a hybrid of dynamic and static variable relationships

机译:NetScatter:多变量时间序列的视觉分析与动态和静态变量关系的混合

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The ability to capture common characteristics among complex multi-variate time series variables can profoundly impact big data analytics in uncovering valuable insights into the relationships among them and enabling a dimensionality reduction technique. Two widely used data displays include time series and scatter plots. While the former focuses on the dynamics over time, the latter deals with static relationships among variables. Motivated by these distinctive perspectives, our research aims to maximally utilize the information captured by both at the same time. This paper presents NetScatter, a visual analytic approach to characterizing changes of pairwise relationships in a high-dimensional time series. Unlike most traditional techniques that employ a single perspective of the visual display, our approach combines static perspectives of two variables in multi-variate time series into a single representation by comparing all data instances over two different time steps. The paper also introduces a list of visual features of the representation to capture how overall data evolve. We have implemented a web-based prototype that supports a full range of operations, such as ranking, filtering, and details on demand. The paper illustrates the proposed approach on data of various sizes in different domains to demonstrate its benefits.
机译:在复杂的多变量时间序列变量中捕获共同特征的能力可以深刻地影响大数据分析,以揭示有价值的见解,并实现维度减少技术。两个广泛使用的数据显示器包括时间序列和散点图。虽然前者随着时间的推移侧重于动态,但后者在变量中涉及静态关系。通过这些独特的观点,我们的研究旨在最大限度地利用两者同时捕获的信息。本文介绍了NetSmatter,一种用于表征高维时间序列中成对关系变化的视觉分析方法。与采用视觉显示的单个角度的最传统技术不同,我们的方法将多变量时间序列中的两个变量的静态视角与两个不同时间步长的所有数据实例进行比较,将两个变量的两个变量与单个表示相结合到单个表示中。本文还介绍了表示的可视特征列表,以捕获整体数据的发展方式。我们已经实现了一种基于Web的原型,支持全方位的操作,例如排名,过滤和根据需求的详细信息。本文说明了不同域中各种尺寸数据的提出方法,以证明其益处。

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