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Evaluating Animated Transitions between Contiguous Visualizations for Streaming Big Data

机译:评估连续可视化之间的动画转换,用于流媒体大数据

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An approach to analyzing Streaming Big Data as it comes in while maintaining the proper context of past events is to employ contiguous visualizations with an increasingly aggressive aggregation degree. This allows for the most recent data to be displayed in detail, while older data is shown in an aggregated form according to how long ago it was received. However, the transitions applied between visualizations with different aggregations must not compromise the understandability of the data flow. Particularly, new data should be perceived considering the context established by older data, and the visualizations should not be perceived as independent or un-connected. In this paper, we present the first study on transitions between two contiguous visualizations, focusing on time series data. We developed several animated transitions between a scatter plot, where all data points are individually represented as they arrive, and other visualizations where data is displayed in an aggregated form. We then conducted a user evaluation to assess the most appealing and effective transitions that allow for the best comprehension of the displayed data for each visualization pair.
机译:在维护过去事件的正确上下文的同时分析流大数据的方法是采用具有越来越积极的聚合度的连续可视化。这允许详细显示最近的数据,而旧数据以汇总形式以常见的形式显示为多久以来。但是,在具有不同聚合之间的可视化之间应用的转换不得损害数据流的可理解性。特别地,考虑到旧数据建立的上下文,应感知新数据,并且不应被视为独立或未连接的可视化。在本文中,我们在两个连续可视化之间进行了第一次研究,重点关注时间序列数据。我们在散点图之间开发了几个动画转换,其中所有数据点都是单独表示的,以及以聚合形式显示数据的其他可视化。然后,我们进行了用户评估,以评估最具吸引力和有效的转换,允许对每个可视化对的显示数据的最佳理解进行最佳理解。

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