论文标题

Threddy:一种基于个性化线程的探索和组织科学文献的交互式系统

Threddy: An Interactive System for Personalized Thread-based Exploration and Organization of Scientific Literature

论文作者

Kang, Hyeonsu B., Chang, Joseph Chee, Kim, Yongsung, Kittur, Aniket

论文摘要

审查文献了解过去工作的相关线索是研究和学习工具的关键部分。但是,随着科学文献的挑战,用户寻找并理解许多不同的研究线索也会成长。先前的工作帮助学者使用独立工具或概述可视化来查找和分组文本信息或文本相似性。取而代之的是,在这项工作中,我们探索了一个集成到用户阅读过程中的工具,该工具可帮助他们利用作者对线程的现有摘要(通常在介绍或相关的工作部分),以便将自己的工作贡献。为了探讨这一点,我们开发了一个原型,该原型支持有效提取和组织线程,并在科学家阅读研究文章时支持证据。然后,该系统建议基于用户创建的线程的更多相关文章。我们在一项实验室研究中评估了该系统,发现它可以帮助科学家遵循和策划研究线程,而不会破坏其阅读流,收集相关论文和剪辑,并发现有趣的新文章以进一步发展线程。

Reviewing the literature to understand relevant threads of past work is a critical part of research and vehicle for learning. However, as the scientific literature grows the challenges for users to find and make sense of the many different threads of research grow as well. Previous work has helped scholars to find and group papers with citation information or textual similarity using standalone tools or overview visualizations. Instead, in this work we explore a tool integrated into users' reading process that helps them with leveraging authors' existing summarization of threads, typically in introduction or related work sections, in order to situate their own work's contributions. To explore this we developed a prototype that supports efficient extraction and organization of threads along with supporting evidence as scientists read research articles. The system then recommends further relevant articles based on user-created threads. We evaluate the system in a lab study and find that it helps scientists to follow and curate research threads without breaking out of their flow of reading, collect relevant papers and clips, and discover interesting new articles to further grow threads.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源