Structural, transitive and latent models for biographic fact extraction

EACL(2009)

引用 44|浏览33
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摘要
This paper presents six novel approaches to biographic fact extraction that model structural, transitive and latent properties of biographical data. The ensemble of these proposed models substantially outperforms standard pattern-based biographic fact extraction methods and performance is further improved by modeling inter-attribute correlations and distributions over functions of attributes, achieving an average extraction accuracy of 80% over seven types of biographic attributes.
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关键词
novel approach,inter-attribute correlation,extraction method,latent property,standard pattern-based biographic fact,biographical data,biographic fact extraction,biographic attribute,average extraction accuracy,latent model,fact extraction
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