探索大众传媒档案中的时间社群

Haolin Ren, B. Renoust, G. Melançon, M. Viaud, S. Satoh
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引用次数: 3

摘要

随着时间的推移分析大型多媒体档案的一个关键任务是动态地监视概念和实体的活动及其相互作用。这有助于分析新闻档案中的主题线索(故事如何展开),或监测社会群体的演变和发展。动态图建模是一种强大的工具,可以捕获这些随时间变化的交互,而可视化和查找社区仍然很困难,特别是在链接密度很高的情况下。我们提出提取动态图的主干,以方便社区检测和指导趋势演变的探索。通过图形结构,我们交互地协调节点链接图、Sankey图、时间序列和动画,以提取模式和跟踪社区行为。我们用足球在法国6年的电视/广播杂志中所扮演的角色,以及朝鲜在日本10年的新闻中所扮演的角色来说明我们的系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Temporal Communities in Mass Media Archives
One task key to the analysis of large multimedia archive over time is to dynamically monitor the activity of concepts and entities with their interactions. This is helpful to analyze threads of topics over news archives (how stories unfold), or to monitor evolutions and development of social groups. Dynamic graph modeling is a powerful tool to capture these interactions over time, while visualization and finding communities still remain difficult, especially with a high density of links. We propose to extract the backbone of dynamic graphs in order to ease community detection and guide the exploration of trends evolution. Through the graph structure, we interactively coordinate node-link diagrams, Sankey diagrams, time series, and animations in order to extract patterns and follow community behavior. We illustrate our system with the exploration of the role of soccer in 6 years of TV/radio magazines in France, and the role of North Korea in about 10 years of Japanese news.
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