K-anonymity model for privacy-preserving soccer fitness data publishing

With the development of data mining technology, more and more researchers use the soccer fitness data to analyse the ranking of soccer athletes' and professional training. However, the direct release of soccer fitness data may leak the personal privacy of soccer athletes, so how to ensure the u...

Full description

Bibliographic Details
Main Authors: Li Rong, An Shushan, Li Dong, Dong Jian, Bai Wanjian, Li Hongmei, Zhang Zhiming, Lin Qingyang
Format: Article
Language:English
Published: EDP Sciences 2018-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201818903007
_version_ 1818740743064256512
author Li Rong
An Shushan
Li Dong
Dong Jian
Bai Wanjian
Li Hongmei
Zhang Zhiming
Lin Qingyang
author_facet Li Rong
An Shushan
Li Dong
Dong Jian
Bai Wanjian
Li Hongmei
Zhang Zhiming
Lin Qingyang
author_sort Li Rong
collection DOAJ
description With the development of data mining technology, more and more researchers use the soccer fitness data to analyse the ranking of soccer athletes' and professional training. However, the direct release of soccer fitness data may leak the personal privacy of soccer athletes, so how to ensure the utility of soccer fitness data and the privacy of soccer player has become an issue. In this paper, we point out the linking attack existing in soccer fitness data, which the attackers can use the auxiliary demographic data as background information to attack the published physical data. So the attackers will map the privacy data and the athlete together. At the same time, we apply the partitioning-based and k-means clustering-based two k-anonymity algorithms to the soccer fitness data publishing to trade-offs the data utility and the personal privacy. Experimental results showed that the performance of methods is convincing.
first_indexed 2024-12-18T01:45:34Z
format Article
id doaj.art-b0e66b5672ab499281a12729a888aeea
institution Directory Open Access Journal
issn 2261-236X
language English
last_indexed 2024-12-18T01:45:34Z
publishDate 2018-01-01
publisher EDP Sciences
record_format Article
series MATEC Web of Conferences
spelling doaj.art-b0e66b5672ab499281a12729a888aeea2022-12-21T21:25:12ZengEDP SciencesMATEC Web of Conferences2261-236X2018-01-011890300710.1051/matecconf/201818903007matecconf_meamt2018_03007K-anonymity model for privacy-preserving soccer fitness data publishingLi RongAn ShushanLi DongDong JianBai WanjianLi HongmeiZhang ZhimingLin QingyangWith the development of data mining technology, more and more researchers use the soccer fitness data to analyse the ranking of soccer athletes' and professional training. However, the direct release of soccer fitness data may leak the personal privacy of soccer athletes, so how to ensure the utility of soccer fitness data and the privacy of soccer player has become an issue. In this paper, we point out the linking attack existing in soccer fitness data, which the attackers can use the auxiliary demographic data as background information to attack the published physical data. So the attackers will map the privacy data and the athlete together. At the same time, we apply the partitioning-based and k-means clustering-based two k-anonymity algorithms to the soccer fitness data publishing to trade-offs the data utility and the personal privacy. Experimental results showed that the performance of methods is convincing.https://doi.org/10.1051/matecconf/201818903007
spellingShingle Li Rong
An Shushan
Li Dong
Dong Jian
Bai Wanjian
Li Hongmei
Zhang Zhiming
Lin Qingyang
K-anonymity model for privacy-preserving soccer fitness data publishing
MATEC Web of Conferences
title K-anonymity model for privacy-preserving soccer fitness data publishing
title_full K-anonymity model for privacy-preserving soccer fitness data publishing
title_fullStr K-anonymity model for privacy-preserving soccer fitness data publishing
title_full_unstemmed K-anonymity model for privacy-preserving soccer fitness data publishing
title_short K-anonymity model for privacy-preserving soccer fitness data publishing
title_sort k anonymity model for privacy preserving soccer fitness data publishing
url https://doi.org/10.1051/matecconf/201818903007
work_keys_str_mv AT lirong kanonymitymodelforprivacypreservingsoccerfitnessdatapublishing
AT anshushan kanonymitymodelforprivacypreservingsoccerfitnessdatapublishing
AT lidong kanonymitymodelforprivacypreservingsoccerfitnessdatapublishing
AT dongjian kanonymitymodelforprivacypreservingsoccerfitnessdatapublishing
AT baiwanjian kanonymitymodelforprivacypreservingsoccerfitnessdatapublishing
AT lihongmei kanonymitymodelforprivacypreservingsoccerfitnessdatapublishing
AT zhangzhiming kanonymitymodelforprivacypreservingsoccerfitnessdatapublishing
AT linqingyang kanonymitymodelforprivacypreservingsoccerfitnessdatapublishing