RT Journal Article
A1 Golnar Assadat Afzali
A1 Shahriar Mohammadi

PB iet
T1 Privacy preserving big data mining: association rule hiding using fuzzy logic approach
JN IET Information Security
VO 12
IS 1
SP 15
OP 24
AB Recently, privacy preserving data mining has been studied widely. Association rule mining can cause potential threat toward privacy of data. So, association rule hiding techniques are employed to avoid the risk of sensitive knowledge leakage. Many researches have been done on association rule hiding, but most of them focus on proposing algorithms with least side effect for static databases (with no new data entrance), while now the authors confront with streaming data which are continuous data. Furthermore, in the age of big data, it is necessary to optimise existing methods to be executable for large volume of data. In this study, data anonymisation is used to fit the proposed model for big data mining. Besides, special features of big data such as velocity make it necessary to consider each rule as a sensitive association rule with an appropriate membership degree. Furthermore, parallelisation techniques which are embedded in the proposed model, can help to speed up data mining process.
K1 fuzzy logic approach
K1 privacy preserving Big Data mining
K1 continuous data
K1 association rule mining
K1 static databases
K1 parallelisation techniques
K1 sensitive association rule
K1 association rule hiding
K1 data anonymisation
K1 membership degree
K1 streaming data
DO https://doi.org/10.1049/iet-ifs.2015.0545
UL https://digital-library.theiet.org/;jsessionid=22lytd6vrvpm.x-iet-live-01content/journals/10.1049/iet-ifs.2015.0545
LA English
SN 1751-8709
YR 2018
OL EN