基于文档嵌入和降维的社交网站主题转换可视化

Tiandong Xiao, Yosuke Onoue
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引用次数: 2

摘要

社交网络服务(sns)已经成为人们表达想法的主要渠道。因此,我们可以通过分析社交网络中的话题来探索人们的思想。什么时候话题会改变?他们还会回来吗?人们主要谈论什么?在这项研究中,我们设计并提出了一个新的视觉分析系统来回答这些有趣的问题。我们通过文档嵌入和降维技术将单位时间的主题抽象为二维空间中的一个点,并提供了表示某一时刻出现的单词和整个时期单词出现的时间序列变化的补充图表。我们采用了一种新颖的文本可视化技术,称为语义保留词泡,在特定时间将单词可视化。此外,我们还利用Twitter上有关日本COVID-19早期趋势的数据证明了我们系统的有效性。我们提出我们的系统来帮助用户探索和理解在SNS上发布的内容的过渡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualization of Topic Transitions in SNSs Using Document Embedding and Dimensionality Reduction
Social networking services (SNSs) have become the main avenue, where people speak their thoughts. Accordingly, we can explore people’s thoughts by analyzing topics in SNS. When do topics change? Do they ever come back? What do people mainly talk about? In this study, we design and propose a novel visual analytics system to answer these interesting questions. We abstract the topic per unit time as a point in a two-dimensional space through document embedding and dimensionality reduction techniques and provide supplemented charts that represent words appearing at a certain time and the time-series change of word occurrence over the entire period. We employ a novel text visualization technique, called semantic preserving word bubbles, to visualize words at a certain time. In addition, we demonstrate the effectiveness of our system using Twitter data about early COVID-19 trends in Japan. We propose our system to help users to explore and understand transitions in posted contents on SNS.
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