\u3cp\u3eData generalization is a widely-used privacy technique, in which an accurate value of sensitive information is replaced with a more general representation. The problem of data generalization becomes challenging when data is distributed among several agents, who are interested in releasing their table of data to shape a data mining algorithm on the whole of their data. The main issue originates from the fact that when each agent generalizes her own dataset locally, the released tables of data suffer from non-homogeneity. To sole the issue, all agents can generalize their data to the widest range of generalization. However, this approach causes utility loss. To optimally address this problem, in this study we present a framework that...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...
Data generalization is a widely-used privacy technique, in which an accurate value of sensitive info...
Data generalization is a widely-used privacy technique, in which an accurate value of sensitive info...
Data generalization is a widely-used privacy technique, in which an accurate value of sensitive info...
Data generalization is a widely-used privacy technique, in which an accurate value of sensitive info...
Data generalization is a widely-used privacy technique, in which an accurate value of sensitive info...
Most previous research on privacy-preserving data publishing, based on the k-anonymity model, has fo...
Most previous research on privacy-preserving data publishing, ba-sed on the k-anonymity model, has f...
A technique for releasing information such that the ability to link the released data to other infor...
The dissemination of textual personal information has become an important driver of innovation. Howe...
The well-known privacy-preserved data mining modifies existing data mining techniques to randomized ...
The dissemination of textual personal information has become an important driver of innovation. Howe...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...
Data generalization is a widely-used privacy technique, in which an accurate value of sensitive info...
Data generalization is a widely-used privacy technique, in which an accurate value of sensitive info...
Data generalization is a widely-used privacy technique, in which an accurate value of sensitive info...
Data generalization is a widely-used privacy technique, in which an accurate value of sensitive info...
Data generalization is a widely-used privacy technique, in which an accurate value of sensitive info...
Most previous research on privacy-preserving data publishing, based on the k-anonymity model, has fo...
Most previous research on privacy-preserving data publishing, ba-sed on the k-anonymity model, has f...
A technique for releasing information such that the ability to link the released data to other infor...
The dissemination of textual personal information has become an important driver of innovation. Howe...
The well-known privacy-preserved data mining modifies existing data mining techniques to randomized ...
The dissemination of textual personal information has become an important driver of innovation. Howe...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...
In data publishing, privacy and utility are essential for data owners and users respectively, which ...