Parallel Corpus Approach for Name Matching in Record Linkage

Data Mining(2014)

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摘要
Record linkage, or entity resolution, is an important area of data mining. Name matching is a key component of systems for record linkage. Alternative spellings of the same name are a common occurrence in many applications. We use the largest collection of genealogy person records in the world together with user search query logs to build name-matching models. The procedure for building a crowd-sourced training set is outlined together with the presentation of our method. We cast the problem of learning alternative spellings as a machine translation problem at the character level. We use information retrieval evaluation methodology to show that this method substantially outperforms on our data a number of standard well known phonetic and string similarity methods in terms of precision and recall. Our result can lead to a significant practical impact in entity resolution applications.
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关键词
data mining,language translation,parallel processing,query processing,string matching,character level,crowd-sourced training set,data mining,entity resolution,genealogy person records,information retrieval evaluation methodology,machine translation problem,name matching,parallel corpus approach,phonetic method,record linkage,string similarity methods,user search query logs,Crowd Sourcing,Machine Translation,Record Linkage
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