Entity Extraction without Language-Specific Resources.

CoNLL(2002)

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摘要
We describe a named-entity tagging system that requires minimal linguistic knowledge and thus may be applied to new target languages without significant adaptation. To maintain a language- neutral posture, the system is linguistically nave, and in fact, reduces the tagging problem to supervised machine learning. A large number of binary features are extracted from labeled data to train classifiers and computationally expensive features are eschewed. We have initially focused our attention on linear support vectors machines (SVMs); SVMs are known to work well when a large number of features is used as long as the individual vectors are sparse. We call our system SNOOD (Hopkins APL Inductive Retargetable Named Entity Tagger).
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关键词
hopkins apl inductive retargetable,binary feature,linear support vectors machine,entity extraction,entity tagger,computationally expensive feature,language-specific resource,tagging problem,individual vector,large number,named-entity tagging system,system snood,support vector machine
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