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Supervised learning for record linkage through weighted means and OWA operators

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Języki publikacji
EN
Abstrakty
EN
Record linkage is a technique used to link records from one database with records from another database, making reference to the same individuals. Although it is normally used in database integration, it is also frequently applied in the context of data privacy. Distance-based record linkage permits linking records by their closeness. In this paper we propose a supervised approach for linking records with numerical attributes. We provide two different approaches, one based on the weighted mean and another on the OWA operator. The parameterization in both cases is determined as an optimization problem. We evaluate our proposal and compare it with standard distance based record linkage, which does not rely on the parameterization of the distance functions. To that end we test the proposal in the context of data privacy by linking a data file with its corresponding protected version.
Rocznik
Strony
1011--1026
Opis fizyczny
Bibliogr. 31 poz.
Twórcy
autor
autor
  • IIIA, Institut d'Investigacio en Intel-ligencia Artificial - CSIC, Consejo Superior de Investigaciones Cientificas, Campus UAB s/n, 08193 Bellaterra, Catalonia, Spain, vtorra@iiia.csic.es
Bibliografia
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  • DOMINGO-FERRER, J., MATEO-SANZ, J.M. and TORRA, V. (2001) Comparing sdc methods for microdata on the basis of information loss and disclosure risk. In: Preproceedings of ETK-NTTS 2001 (vol. 2). Eurostat, 807-826.
  • DOMINGO-FERRER, J. and MATEO-SANZ, J.M. (2002) Practical data-oriented microaggregation for statistical disclosure control. IEEE Trans, on Knowledge and Data Engineering 14 (1), 189-201.
  • DOMINGO-FERRER, J. and TORRA, V. (2005) Ordinal, Continuous and Heterogeneous k-Anonymity Through Microaggregation. Data Mining and Knowledge Discovery 11 (2), 195-212.
  • DOMINGO-FERRER, J., TORRA, V., MATEO-SANZ, J.M. and SEBE, F. (2006) Empirical disclosure risk assessment of the ipso synthetic data generators. In: Monographs in Official Statistics-Work Session On Statistical Data Confidentiality. Eurostat, 227-238.
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  • OGANIAN, A. and DOMINGO-FERRER, J. (2000) On the Complexity of Optimal Microaggregation for Statistical Disclosure Control. Statistical J. United Nations Economic Commission for Europe 18 (4), 345-354.
  • R (2010) R project, software environment for statistical computing and graphics. GNU project, http://www.r-project.org/
  • SAMARATI, P. (2001) Protecting Respondents’ Identities in Microdata Release. IEEE Transactions on Knowledge and Data Engineering 13 (6), 1010-1027.
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  • TORRA, V. (2004) Microaggregation for categorical variables: a median based approach. Proc. Privacy in Statistical Databases (PSD 2004). LNCS 3050. Springer, 162-174.
  • TORRA, V. (2004) OWA operators in data modeling and Re-identification. IEEE Trans, on Fuzzy Systems 12 (5), 652-660.
  • TORRA, V. (2008) Constrained microaggregation: Adding constraints for data editing. Transactions on Data Privacy 1 (2), 86-104.
  • TORRA, V., ABOWD, J., and DOMINGO-FERRER, J. (2006) Using Mahalano-bis distance-based record linkage for disclosure risk assessment. Privacy in Statistical Databases (PSD 2006). LNCS 4302. Springer, 233-242.
  • WINKLER, W.E. (2003) Data cleaning methods. Proc. SIGKDD 2003. ACM.
  • WINKLER, W.E. (2004) Re-identification methods for masked microdata. Privacy in Statistical Databases (PSD 2004), LNCS 3050. Springer, 216-230.
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Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BAT5-0060-0013
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