Hedwig - A Named Entity Linker.

LREC(2020)

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摘要
Named entity linking is the task of identifying mentions of named things in text, such as "Barack Obama" or "New York", and linking these mentions to unique identifiers. In this paper, we describe Hedwig, an end-to-end named entity linker, which uses a combination of word and character BILSTM models for mention detection, a Wikidata and Wikipedia-derived knowledge base with global information aggregated over nine language editions, and a PageRank algorithm for entity linking. We evaluated Hedwig on the TAC2017 dataset, consisting of news texts and discussion forums, and we obtained a final score of 59.9% on CEAFmC+, an improvement over our previous generation linker Ugglan, and a trilingual entity link score of 71.9%.
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关键词
named entity recognition, named entity linking, named entity annotation
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