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Visualizing The Impact of Time Series Data for Predicting User Interactions

机译:可视化时间序列数据的影响预测用户交互

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In recent years the importance of user interactions has been recognized in a variety of research contexts. There is a variety of algorithms for modeling these in social graphs; in particular, we distinguish static and dynamic relations. In contrast to static graphs in which the networks do not change over time, the underlying relation is changing frequently in various contexts. This should be reflected by a time dependent social neighborhood of users. In this paper, we present a new and intuitive visualization concept for the histories of user interactions. We derive association rules and visualize these using heatmaps. We demonstrate the impact of the presented approach by several examples utilizing real-world data - using the well known twitter dump of 2009.
机译:近年来,用户互动的重要性已经在各种研究环境中得到了认可。有各种用于在社交图中建模这些算法;特别是,我们区分静态和动态关系。与网络上没有随时间变化的静态图形相比,底层关系经常在各种上下文中变化。这应该由用户依赖社会社区反映。在本文中,我们为用户交互的历史提出了一种新的和直观的可视化概念。我们派生协会规则并使用Heatmaps可视化这些。我们通过众所周知的Twitter转储,我们展示了所提出的方法对呈现的几个例子的影响 - 使用2009年的众所周知的Twitter转储。

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