Off to a Cold Start: New York University's 2013 Knowledge Base Population Systems
نویسنده
چکیده
New York University submitted two runs this year: a KBP Slot Filling run and a Cold Start run. The Slot Filling run used the same system as last year (Min et al. 2012), with only the minimal changes needed to address the revised specifications. These included changes in the provenance information and collapsing employee_of and member_of slots. We included the confidence estimation step (Li and Grishman 2013) which had been implemented last year after the official run and was described in last year's proceedings (Min et al. 2012).
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New York University 2014 Knowledge Base Population Systems
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