Machine-Assisted Script Curation
- URL: http://arxiv.org/abs/2101.05400v1
- Date: Thu, 14 Jan 2021 00:19:21 GMT
- Title: Machine-Assisted Script Curation
- Authors: Manuel R. Ciosici, Joseph Cummings, Mitchell DeHaven, Alex Hedges,
Yash Kankanampati, Dong-Ho Lee, Ralph Weischedel, Marjorie Freedman
- Abstract summary: We describe Machine-Aided Script Curator (MASC), a system for human-machine collaborative script authoring.
MASC automates portions of the script creation process with suggestions for event types, links to Wikidata, and sub-events that may have been forgotten.
- Score: 7.063255210805794
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: We describe Machine-Aided Script Curator (MASC), a system for human-machine
collaborative script authoring. Scripts produced with MASC include (1) English
descriptions of sub-events that comprise a larger, complex event; (2) event
types for each of those events; (3) a record of entities expected to
participate in multiple sub-events; and (4) temporal sequencing between the
sub-events. MASC automates portions of the script creation process with
suggestions for event types, links to Wikidata, and sub-events that may have
been forgotten. We illustrate how these automations are useful to the script
writer with a few case-study scripts.
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