LabelTransfer -集成静态和动态标签表示的焦点+上下文文本探索

Qi Han, M. John, Steffen Koch, Ivan Assenov, T. Ertl
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引用次数: 7

摘要

近年来,用于分析文本文档的交互式可视化获得了令人印象深刻的势头。考虑到各种电子文本文件的快速增长,这并不奇怪。例如,这些资源包括专利、学术文献、社交媒体信息以及许多其他资源,这些资源包含对许多利益相关者有价值的知识和见解。交互式文本可视化是探索和深入了解复杂且通常较大的文档集合的重要手段。已经建立的表示这些集合的可视化策略是使用基于投影的技术,将文档可视化为2D视图中的符号,目的是通过文档位置的接近程度来反映文档的语义相似性。有人建议用静态标签来描述投影数据中包含的总体主题,以提高这种可视化技术的有效性。其他方法使用神奇的镜头,使用户能够在各种粒度级别上自由地探索2D空间化。在这项工作中,我们提出了一种视觉探索方法,将基于聚类的投影文档标记与魔术透镜技术的交互概念相结合。我们提供了一组新颖的交互功能,以支持静态标签和魔术镜头方法之间的平滑过渡,同时利用这两种技术的不同层次的视觉抽象,而不会通过透支引入额外的混乱。最后,我们提供了从初步用户研究中获得的见解,并介绍了我们的方法的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LabelTransfer - Integrating Static and Dynamic Label Representation for Focus+Context Text Exploration
In recent years, interactive visualization to analyze text documents has gained an impressive momentum. This is not surprising considering the fast increase of electronically available textual documents of various kinds. These include, for example, patents, scholarly documents, social media messages, and many other sources that contain valuable knowledge and insights for many stakeholders. Interactive text visualization turned out to be an important means for exploring and gaining insights into complex and often large document collections. An established visualization strategy to represent such collections is using projection-based techniques that visualize documents as glyphs in a 2D view aiming to reflect the semantic similarity of documents by the proximity of their placement. Static labels have been suggested to characterize the overall topics contained in the projected data to improve the effectiveness of such visualization techniques. Other approaches employ magic lenses that enable users to explore the 2D spatialization freely on various granularity levels. In this work, we propose a visual exploration approach that combines cluster-based labeling of projected documents with an interaction concept for magic lens techniques. We offer a set of novel interactive features to support a smooth transition between static labels and the magic lens approach while exploiting the different levels of visual abstraction of both techniques without introducing additional clutter through overdraw. Finally, we provide insights gained from a preliminary user study and present the benefits of our approach.
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