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A Network-Fusion Guided Dashboard Interface for Task-Centric Document Curation

机译:一个网络融合引导仪表板接口,用于以任务为中心的文档策策

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Knowledge workers are being exposed to more information than ever before, as well as having to work in multi-tasking and collaborative environments. There is an increasing need for interfaces and algorithms to help automatically keep track of documents that are associated with both individual and team tasks. Previous approaches to the problem of automatically applying task labels to documents have been limited to small feature spaces or have not taken into account multi-user environments. Many different clues to potential task associations are available through user, task and document similarity metrics, as well as through temporal patterns in individual and team workflows. We present a network-fusion algorithm for automatic task-centric document curation, and show how this can guide a recent-work dashboard interface, which organizes user's documents and gathers feedback from them. Our approach efficiently computes representations of users, tasks and documents in a common vector space, and can easily take into account many different types of associations through the creation of edges in a multi-layer graph. We have demonstrated the effectiveness of this approach using labelled document corpora from three empirical studies with students and intelligence analysts. We have also shown how to leverage relationships between different entity types to increase classification accuracy by up to 20% over a simpler baseline, and with as little as 10% labelled data.
机译:知识工作者正暴露于比以往任何时候的更多信息,以及必须在多任务和协作环境中工作。越来越需要接口和算法,以帮助自动跟踪与个人和团队任务相关联的文档。以前对文件的问题涉及文件的问题已经限于小型特征空间,或者没有考虑多用户环境。潜在任务关联的许多不同的线索可通过用户,任务和文档相似度指标获得,以及通过个人和团队工作流中的时间模式。我们为自动任务为中心的文档策策提供了一种网络融合算法,并展示了如何指导最近工作的仪表板接口,这些仪表板接口组织用户的文档并收集它们的反馈。我们的方法有效地计算了共同的矢量空间中的用户,任务和文档的表示,并且可以通过在多层图中创建边缘来容易地考虑许多不同类型的关联。我们已经展示了这种方法的有效性,使用标签的文档Corpora与学生和情报分析师的三项实证研究。我们还显示了如何利用不同实体类型之间的关系,通过更简单的基线将分类精度提高到20%,并且只有10%的标记数据。

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