“知道什么”和“知道谁”:基于主题的双模式网络的文档搜索和探索

Jian Zhao, Maoyuan Sun, Patrick Chiu, Francine Chen, Bee Liew
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引用次数: 1

摘要

本文提出了一种分析文档集合搜索结果的新方法,该方法可以帮助支持“知道什么”和“知道谁”的信息查询问题。搜索结果按主题分组,每个主题由相关文档和作者组成的双模式网络(即双聚类)表示。我们在二维布局中可视化这些双聚类,以支持分析搜索结果的交互式可视化探索,这突出了一种组织双聚类实体的新方法。我们使用一个大型学术出版物语料库来评估我们的方法,通过测试相关文档和主要作者和多产作者的分布。结果表明,与传统的一维排名表相比,我们的方法是有效的。此外,对12名参与者进行了用户研究,以比较我们提出的可视化、无主题的简化变体和基于文本的界面。我们报告了参与者的任务表现,他们对三种界面的偏好,以及在信息寻找中使用的不同策略。
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Know-What and Know-Who: Document Searching and Exploration using Topic-Based Two-Mode Networks
This paper proposes a novel approach for analyzing search results of a document collection, which can help support know-what and know-who information seeking questions. Search results are grouped by topics, and each topic is represented by a two-mode network composed of related documents and authors (i.e., biclusters). We visualize these biclusters in a 2D layout to support interactive visual exploration of the analyzed search results, which highlights a novel way of organizing entities of biclusters. We evaluated our approach using a large academic publication corpus, by testing the distribution of the relevant documents and of lead and prolific authors. The results indicate the effectiveness of our approach compared to traditional 1D ranked lists. Moreover, a user study with 12 participants was conducted to compare our proposed visualization, a simplified variation without topics, and a text-based interface. We report on participants’ task performance, their preference of the three interfaces, and the different strategies used in information seeking.
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