Optimizing temporal topic segmentation for intelligent text visualization

Shimei Pan, Michelle X. Zhou, Yangqiu Song, Weihong Qian, Fei Wang, Shixia Liu
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引用次数: 16

Abstract

We are building a topic-based, interactive visual analytic tool that aids users in analyzing large collections of text. To help users quickly discover content evolution and significant content transitions within a topic over time, here we present a novel, constraint-based approach to temporal topic segmentation. Our solution splits a discovered topic into multiple linear, non-overlapping sub-topics along a timeline by satisfying a diverse set of semantic, temporal, and visualization constraints simultaneously. For each derived sub-topic, our solution also automatically selects a set of representative keywords to summarize the main content of the sub-topic. Our extensive evaluation, including a crowd-sourced user study, demonstrates the effectiveness of our method over an existing baseline.
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面向智能文本可视化的时间主题分割优化
我们正在构建一个基于主题的交互式可视化分析工具,帮助用户分析大量文本。为了帮助用户快速发现内容演变和主题内重要的内容转换,我们提出了一种新颖的、基于约束的时间主题分割方法。我们的解决方案通过同时满足不同的语义、时间和可视化约束,将发现的主题沿着时间轴拆分为多个线性的、不重叠的子主题。对于每个衍生的子主题,我们的解决方案还会自动选择一组具有代表性的关键字来总结子主题的主要内容。我们的广泛评估,包括一个众包用户研究,证明了我们的方法在现有基线上的有效性。
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IUI 2022: 27th International Conference on Intelligent User Interfaces, Helsinki, Finland, March 22 - 25, 2022 Employing Social Media to Improve Mental Health: Pitfalls, Lessons Learned, and the Next Frontier IUI '21: 26th International Conference on Intelligent User Interfaces, College Station, TX, USA, April 13-17, 2021 Towards Making Videos Accessible for Low Vision Screen Magnifier Users. SaIL: Saliency-Driven Injection of ARIA Landmarks.
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