Cross-Document Coreference Resolution: A Key Technology for Learning by Reading

AAAI Spring Symposium: Learning by Reading and Learning to Read(2009)

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摘要
Automatic knowledge base population from text is an important technology for a broad range of approaches to learning by reading. Effective automated knowledge base population depends critically upon coreference resolution of entities across sources. Use of a wide range of features, both those that capture evidence for entity merging and those that argue against merging, can significantly improve machine learning-based cross-document coreference resolution. Results from the Global Entity Detection and Recognition task of the NIST Automated Content Extraction (ACE) 2008 evaluation support this conclusion.
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machine learning,knowledge base
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