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Preparation of name and address data for record linkage using hidden Markov models

BACKGROUND: Record linkage refers to the process of joining records that relate to the same entity or event in one or more data collections. In the absence of a shared, unique key, record linkage involves the comparison of ensembles of partially-identifying, non-unique data items between pairs of re...

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Autores principales: Churches, Tim, Christen, Peter, Lim, Kim, Zhu, Justin Xi
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2002
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC140019/
https://www.ncbi.nlm.nih.gov/pubmed/12482326
http://dx.doi.org/10.1186/1472-6947-2-9
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author Churches, Tim
Christen, Peter
Lim, Kim
Zhu, Justin Xi
author_facet Churches, Tim
Christen, Peter
Lim, Kim
Zhu, Justin Xi
author_sort Churches, Tim
collection PubMed
description BACKGROUND: Record linkage refers to the process of joining records that relate to the same entity or event in one or more data collections. In the absence of a shared, unique key, record linkage involves the comparison of ensembles of partially-identifying, non-unique data items between pairs of records. Data items with variable formats, such as names and addresses, need to be transformed and normalised in order to validly carry out these comparisons. Traditionally, deterministic rule-based data processing systems have been used to carry out this pre-processing, which is commonly referred to as "standardisation". This paper describes an alternative approach to standardisation, using a combination of lexicon-based tokenisation and probabilistic hidden Markov models (HMMs). METHODS: HMMs were trained to standardise typical Australian name and address data drawn from a range of health data collections. The accuracy of the results was compared to that produced by rule-based systems. RESULTS: Training of HMMs was found to be quick and did not require any specialised skills. For addresses, HMMs produced equal or better standardisation accuracy than a widely-used rule-based system. However, acccuracy was worse when used with simpler name data. Possible reasons for this poorer performance are discussed. CONCLUSION: Lexicon-based tokenisation and HMMs provide a viable and effort-effective alternative to rule-based systems for pre-processing more complex variably formatted data such as addresses. Further work is required to improve the performance of this approach with simpler data such as names. Software which implements the methods described in this paper is freely available under an open source license for other researchers to use and improve.
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spelling pubmed-1400192003-01-21 Preparation of name and address data for record linkage using hidden Markov models Churches, Tim Christen, Peter Lim, Kim Zhu, Justin Xi BMC Med Inform Decis Mak Research Article BACKGROUND: Record linkage refers to the process of joining records that relate to the same entity or event in one or more data collections. In the absence of a shared, unique key, record linkage involves the comparison of ensembles of partially-identifying, non-unique data items between pairs of records. Data items with variable formats, such as names and addresses, need to be transformed and normalised in order to validly carry out these comparisons. Traditionally, deterministic rule-based data processing systems have been used to carry out this pre-processing, which is commonly referred to as "standardisation". This paper describes an alternative approach to standardisation, using a combination of lexicon-based tokenisation and probabilistic hidden Markov models (HMMs). METHODS: HMMs were trained to standardise typical Australian name and address data drawn from a range of health data collections. The accuracy of the results was compared to that produced by rule-based systems. RESULTS: Training of HMMs was found to be quick and did not require any specialised skills. For addresses, HMMs produced equal or better standardisation accuracy than a widely-used rule-based system. However, acccuracy was worse when used with simpler name data. Possible reasons for this poorer performance are discussed. CONCLUSION: Lexicon-based tokenisation and HMMs provide a viable and effort-effective alternative to rule-based systems for pre-processing more complex variably formatted data such as addresses. Further work is required to improve the performance of this approach with simpler data such as names. Software which implements the methods described in this paper is freely available under an open source license for other researchers to use and improve. BioMed Central 2002-12-13 /pmc/articles/PMC140019/ /pubmed/12482326 http://dx.doi.org/10.1186/1472-6947-2-9 Text en Copyright © 2002 Churches et al; licensee BioMed Central Ltd. This is an Open Access article: verbatim copying and redistribution of this article are permitted in all media for any purpose, provided this notice is preserved along with the article's original URL.
spellingShingle Research Article
Churches, Tim
Christen, Peter
Lim, Kim
Zhu, Justin Xi
Preparation of name and address data for record linkage using hidden Markov models
title Preparation of name and address data for record linkage using hidden Markov models
title_full Preparation of name and address data for record linkage using hidden Markov models
title_fullStr Preparation of name and address data for record linkage using hidden Markov models
title_full_unstemmed Preparation of name and address data for record linkage using hidden Markov models
title_short Preparation of name and address data for record linkage using hidden Markov models
title_sort preparation of name and address data for record linkage using hidden markov models
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC140019/
https://www.ncbi.nlm.nih.gov/pubmed/12482326
http://dx.doi.org/10.1186/1472-6947-2-9
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