Title :
Modeling the Uncertain Data in the K-anonymity Privacy Protection Model
Author :
Wu, Jiawei ; Liu, Guohua
Author_Institution :
Donghua Univ., Shanghai, China
Abstract :
Modeling is the basis for data management of uncertainty. The Specificity in the uncertainty of the data in the k-anonymity privacy protection model is found, namely, its uncertainty is caused by human with generalization, the probability that each instance after generalization is reduced to the original tuple is equal. The past modeling approaches of uncertainty data are not suitable for this kind of uncertainty data simply. In order to describe it, several new modeling methods are proposed in this paper: Kattr model uses attribute-ors ways to describe the uncertainty of the quasi-identifier attribute values, Ktuple model takes the quasi-identifier attribute values as nest relations and use tuple-ors ways to describe the relations, Kupperlower model separates a quasi-identifier attribute to two fields: upper and lower, Ktree model converts each quasi-identifier attribute into a tree. The completeness and closure of these models are discussed later.
Keywords :
data privacy; Kattr model; Ktree model; Ktuple model; Kupperlower model; attribute-ors; k-anonymity privacy protection model; quasi-identifier attribute; tuple-ors; uncertain data modelling; uncertainty data management; Availability; Computational modeling; Data models; Data privacy; Privacy; Probabilistic logic; Uncertainty; closure; completeness; k-anonymity; modeling; uncertain data;
Conference_Titel :
Computational Intelligence and Security (CIS), 2011 Seventh International Conference on
Conference_Location :
Hainan
Print_ISBN :
978-1-4577-2008-6
DOI :
10.1109/CIS.2011.150