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ColTop: Visual Topic-Based Analysis of Scientific Community Structure

机译:ColTop:基于视觉主题的科学共同体结构分析

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摘要

Personal networks formed within scientific communities and the collaborations they yield are one of the driving forces behind innovation and new discoveries. Luckily, successful collaboration produces analyzable data points in the form of publications that allow us to learn and understand some of the connections and collaborative structures in a scientific community. Co-author information is one important aspect of this, and various solutions to the fundamental visualization problems of co-author graphs exist. In this work, we introduce ColTop, a multi-level, interactive graph visualization system that allows users to effectively analyze publication data. It combines coauthor information with other meta-data and information extracted from textual content to support comprehensive analyses. ColTop includes a novel, heuristics-based approach to create a meaningful abstraction of co-author networks, and enriches them with topic information. To demonstrate the applicability of our approach, we discuss an example analysis scenario based on a practical data set.
机译:在科学界内部形成的个人网络及其产生的协作是创新和新发现背后的推动力之一。幸运的是,成功的协作会以出版物的形式生成可分析的数据点,使我们能够学习和理解科学界中的某些联系和协作结构。共同作者信息是此方面的重要方面,并且存在针对共同作者图的基本可视化问题的各种解决方案。在这项工作中,我们介绍了ColTop,这是一个多级交互式图形可视化系统,可让用户有效地分析发布数据。它将合著者信息与其他元数据和从文本内容中提取的信息相结合,以支持全面的分析。 ColTop包括一种新颖的,基于启发式的方法,可以创建合著者网络的有意义的抽象,并用主题信息丰富它们。为了证明我们方法的适用性,我们讨论了基于实际数据集的示例分析场景。

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