The collective attention on online items such as web pages, search terms, and videos reflects trends that are of social, cultural, and economic interest. Moreover, attention trends of different items exhibit mutual influence via mechanisms such as hyperlinks or recommendations. Many visualisation tools exist for time series, network evolution, or network influence; however, few systems connect all three. In this work, we present AttentionFlow, a new system to visualise networks of time series and the dynamic influence they have on one another. Centred around an ego node, our system simultaneously presents the time series on each node using two visual encodings: a tree ring for an overview and a line chart for details. AttentionFlow supports interactions such as overlaying time series of influence and filtering neighbours by time or flux. We demonstrate AttentionFlow using two real-world datasets, VevoMusic and WikiTraffic. We show that attention spikes in songs can be explained by external events such as major awards, or changes in the network such as the release of a new song. Separate case studies also demonstrate how an artist's influence changes over their career, and that correlated Wikipedia traffic is driven by cultural interests. More broadly, AttentionFlow can be generalised to visualise networks of time series on physical infrastructures such as road networks, or natural phenomena such as weather and geological measurements.
翻译:网页、搜索术语和视频等在线项目的集体关注反映了社会、文化和经济利益等趋势。 此外,不同项目的注意趋势通过超链接或建议等机制表现出相互影响。 许多视觉工具存在于时间序列、网络演变或网络影响方面; 然而,很少有系统连接所有三个。 在这项工作中,我们展示了TearFlow, 一个新的时间序列网络的可视化系统以及它们彼此的动态影响。 我们的系统以自我节点为中心, 同时使用两种视觉编码来展示每个节点的时间序列: 用于概览的树环和详细信息的线图。 注意Flow 支持诸如超时时间序列的影响和通过时间或变化过滤邻居等互动。 我们用两个真实世界数据集( Vevo 音乐 和 Wikitraffic ) 展示了Traffic 。 我们显示, 歌曲中的注意力增长可以通过诸如重大奖项或新歌曲发布等网络的变化来解释。 单独的案例研究还表明艺术家如何影响其职业生涯, 以及像视觉网络这样的关联性、 以及视觉网络的自然现象驱动力。