计算机科学
可视化
社交媒体分析
社会化媒体
可用性
视觉分析
情绪分析
可扩展性
数据科学
追踪
过程(计算)
数据可视化
钥匙(锁)
分析
情绪传染
社交网络(社会语言学)
传染效应
社会网络分析
人机交互
信息可视化
计算社会学
现象
人工智能
前提
情报检索
透视图(图形)
创造性可视化
代理(统计)
主题模型
作者
Ren-Zhong Li,Shuainan Ye,Yuchen Lin,Buwei Zhou,Zhining Kang,Tai‐Quan Peng,Wenhao Fu,Tan Tang,Yingcai Wu
标识
DOI:10.1109/tvcg.2025.3633839
摘要
Sentiment contagion occurs when attitudes toward one topic are influenced by attitudes toward others. Detecting and understanding this phenomenon is essential for analyzing topic evolution and informing social policies. Prior research has developed models to simulate the contagion process through hypothesis testing and has visualized user-topic correlations to aid comprehension. Nevertheless, the vast volume of topics and the complex interrelationships on social media present two key challenges: (1) efficient construction of large-scale sentiment contagion networks, and (2) in-depth explorations of these networks. To address these challenges, we introduce a causality-based framework that efficiently constructs and explains sentiment contagion. We further propose a map-like visualization technique that encodes time using a horizontal axis, enabling efficient visualization of causality-based sentiment flow while maintaining scalability through limitless spatial segmentation. Based on the visualization, we develop CausalMap, a system that supports analysts in tracing sentiment contagion pathways and assessing the influence of different demographic groups. Furthermore, we conduct comprehensive evaluations-including two use cases, a task-based user study, an expert interview, and an algorithm evaluation-to validate the usability and effectiveness of our approach.
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