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

Published: 07 March 2017 Publication History

Abstract

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.

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Cited By

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  • (2024)Entity Footprinting: Modeling Contextual User States via Digital Activity MonitoringACM Transactions on Interactive Intelligent Systems10.1145/364389314:2(1-27)Online publication date: 5-Feb-2024
  • (2018)Bringing the National Security Agency into the Classroom: Ethical Reflections on Academia-Intelligence Agency PartnershipsScience and Engineering Ethics10.1007/s11948-017-9938-7Online publication date: 9-Jan-2018

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cover image ACM Conferences
IUI '17: Proceedings of the 22nd International Conference on Intelligent User Interfaces
March 2017
654 pages
ISBN:9781450343480
DOI:10.1145/3025171
© 2017 Association for Computing Machinery. ACM acknowledges that this contribution was authored or co-authored by an employee, contractor or affiliate of the United States government. As such, the United States Government retains a nonexclusive, royalty-free right to publish or reproduce this article, or to allow others to do so, for Government purposes only.

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Published: 07 March 2017

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Author Tags

  1. dashboard
  2. deepwalk
  3. information recall
  4. instrumentation
  5. interface
  6. knowledge workers
  7. multi-layer graph
  8. network-fusion
  9. tasks
  10. vector embedding
  11. workflow

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IUI '17 Paper Acceptance Rate 63 of 272 submissions, 23%;
Overall Acceptance Rate 746 of 2,811 submissions, 27%

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View all
  • (2024)Entity Footprinting: Modeling Contextual User States via Digital Activity MonitoringACM Transactions on Interactive Intelligent Systems10.1145/364389314:2(1-27)Online publication date: 5-Feb-2024
  • (2018)Bringing the National Security Agency into the Classroom: Ethical Reflections on Academia-Intelligence Agency PartnershipsScience and Engineering Ethics10.1007/s11948-017-9938-7Online publication date: 9-Jan-2018

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