An entity-level approach to information extraction

ACL (Short Papers)(2010)

引用 29|浏览20
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摘要
We present a generative model of template-filling in which coreference resolution and role assignment are jointly determined. Underlying template roles first generate abstract entities, which in turn generate concrete textual mentions. On the standard corporate acquisitions dataset, joint resolution in our entity-level model reduces error over a mention-level discriminative approach by up to 20%.
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关键词
role assignment,joint resolution,entity-level approach,underlying template role,mention-level discriminative approach,abstract entity,standard corporate acquisitions dataset,entity-level model,coreference resolution,generative model,concrete textual,information extraction
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