Semantic refinement and error correction in large terminological knowledge bases

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摘要

Capturing the semantics of concepts in a terminology has been an important problem in AI. A two-level approach has been proposed where concepts are classified into high-level semantic types, with these types constituting a portion of the concepts’ semantics. We present an algorithmic methodology for refining such two-level terminologic networks. A new network is produced consisting of “pure” semantic types and intersection types. Concepts are uniquely re-assigned to these new types. Overall, these types form a better conceptual abstraction, with each exhibiting uniform semantics. Using them, it becomes easier to detect classification errors. The methodology is applied to the UMLS.

论文关键词:Concept hierarchy,Semantic type,Semantic refinement,Terminological knowledge base,Semantic error correction

论文评审过程:Received 5 September 2001, Accepted 17 July 2002, Available online 12 December 2002.

论文官网地址:https://doi.org/10.1016/S0169-023X(02)00153-2