Many data analysis problems rely on dynamic networks, such as social or communication network analyses. Providing a scalable overview of long sequences of such dynamic networks remains challenging due to the underlying large-scale data containing elusive topological changes. We propose two complementary pixel-based visualizations, which reflect occurrences of selected sub-networks (motifs) and provide a time-scalable overview of dynamic networks: a network-level census (motif significance profiles) linked with a node-level sub-network metric (graphlet degree vectors) views to reveal structural changes, trends, states, and outliers. The network census captures significantly occurring motifs compared to their expected occurrences in random networks and exposes structural changes in a dynamic network. The sub-network metrics display the local topological neighborhood of a node in a single network belonging to the dynamic network. The linked pixel-based visualizations allow exploring motifs in different-sized networks to analyze the changing structures within and across dynamic networks, for instance, to visually analyze the shape and rate of changes in the network topology. We describe the identification of visual patterns, also considering different reordering strategies to emphasize visual patterns. We demonstrate the approach's usefulness by a use case analysis based on real-world large-scale dynamic networks, such as the evolving social networks of Reddit or Facebook.
翻译:许多数据分析问题依赖于动态网络,例如社会或通信网络分析。提供这种动态网络长序列的可缩放概览仍然具有挑战性,因为其基础的大规模数据包含难以捉摸的地形变化。我们提议了两个互补的像素直观化图象,反映选定子网络(motifs)的出现,并提供动态网络的时间可缩放概览:一个网络一级的普查(motif impressive situalization),与一个节点连接起来的子网络(graphlet imeal situal),以显示结构变化、趋势、状态和外部关系。网络普查捕捉到与随机网络中预期发生的情况相比正在发生的巨型图象,并揭示动态网络中的结构性变化。子网络测量显示属于动态网络的单一网络中某个节点的局部地貌周边。基于像素意义的直观化图象化图解可以探索不同规模网络的模型,以分析动态网络内部和跨动态网络的变化结构,例如,以视觉方式分析网络变化的形状和速度。我们用视觉模式来说明这种动态模式的动态分析。我们强调以视觉模式的大小分析。