The K-Anonymization Method Satisfying Personalized Privacy Preservation

Even if k-anonymity model can prevent publishing data from disclosing privacy effectively and efficiently, due to the uneven distribution of the sensitive data, ordinary k-anonymization method cannot guarantee each tuple satisfying the personalized privacy requirement of it’s data owner although the...

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Main Authors: J.L. Song, L.M. Huang, G. Wang, Y. Kang, H.B. Liu
Format: Article
Language:English
Published: AIDIC Servizi S.r.l. 2015-12-01
Series:Chemical Engineering Transactions
Online Access:https://www.cetjournal.it/index.php/cet/article/view/4200
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author J.L. Song
L.M. Huang
G. Wang
Y. Kang
H.B. Liu
author_facet J.L. Song
L.M. Huang
G. Wang
Y. Kang
H.B. Liu
author_sort J.L. Song
collection DOAJ
description Even if k-anonymity model can prevent publishing data from disclosing privacy effectively and efficiently, due to the uneven distribution of the sensitive data, ordinary k-anonymization method cannot guarantee each tuple satisfying the personalized privacy requirement of it’s data owner although the publishing table has been satisfied k-anonymity constraint. The reason which k-anonymity table fails to satisfy personalized privacy requirement is analyzed firstly, then Correlate degree of Sensitive Values, Leakage Collection, privacy disclosure metric and data quality metric are presented. At last an anonymization method satisfying personalized privacy requirements is presented, in which a utility-driven adaptive clustering method is proposed to partition tuples with similar best data quality.
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spelling doaj.art-337eadadbaff4a5282af2f02c15fb7892022-12-21T22:44:41ZengAIDIC Servizi S.r.l.Chemical Engineering Transactions2283-92162015-12-014610.3303/CET1546031The K-Anonymization Method Satisfying Personalized Privacy PreservationJ.L. SongL.M. HuangG. WangY. KangH.B. LiuEven if k-anonymity model can prevent publishing data from disclosing privacy effectively and efficiently, due to the uneven distribution of the sensitive data, ordinary k-anonymization method cannot guarantee each tuple satisfying the personalized privacy requirement of it’s data owner although the publishing table has been satisfied k-anonymity constraint. The reason which k-anonymity table fails to satisfy personalized privacy requirement is analyzed firstly, then Correlate degree of Sensitive Values, Leakage Collection, privacy disclosure metric and data quality metric are presented. At last an anonymization method satisfying personalized privacy requirements is presented, in which a utility-driven adaptive clustering method is proposed to partition tuples with similar best data quality.https://www.cetjournal.it/index.php/cet/article/view/4200
spellingShingle J.L. Song
L.M. Huang
G. Wang
Y. Kang
H.B. Liu
The K-Anonymization Method Satisfying Personalized Privacy Preservation
Chemical Engineering Transactions
title The K-Anonymization Method Satisfying Personalized Privacy Preservation
title_full The K-Anonymization Method Satisfying Personalized Privacy Preservation
title_fullStr The K-Anonymization Method Satisfying Personalized Privacy Preservation
title_full_unstemmed The K-Anonymization Method Satisfying Personalized Privacy Preservation
title_short The K-Anonymization Method Satisfying Personalized Privacy Preservation
title_sort k anonymization method satisfying personalized privacy preservation
url https://www.cetjournal.it/index.php/cet/article/view/4200
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