Online social networks (OSNs) often contain sensitive information about individuals. Therefore, anonymizing social network data before releasing it becomes an important issue. Recent research introduces several graph abstraction models to extract graph features and add sufficient noise to achieve differential privacy.In this paper, we design and analyze a comprehensive differentially private graph model that combines the dK-1, dK-2, and dK-3 series together. The dK-1 series stores the degree frequency, the dK-2 series adds the joint degree frequency, and the dK-3 series contains the linking information between edges. In our scheme, low dimensional data makes the regeneration process more executable and effective, while high dimensional data...
The proliferation of online social networks, and the concomitant accumulation of user data, give ris...
Abstract- With the rapid growth of social networks, more researchers found that it is a great opport...
Perceptive information about users of the social networks should be protected. The confront is to pl...
Abstract. Enabling accurate analysis of social network data while preserving differential privacy ha...
Data privacy in social networks is a growing concern that threatens to limit access to important inf...
Abstract—Privacy is one of the major concerns when publishing or sharing social network data for soc...
Nowadays, more and more people join social networks, such as Facebook, Linkedin, and Livespace, to s...
Motivated by growing concerns over ensuring privacy on social networks, we develop new algorithms an...
Motivated by a real life problem of sharing social network data that contain sensitive personal info...
The third-party enterprises, such as sociologists and commercial companies, are mining data publishe...
Following the trend of preserving privacy in online-social-network publishing, various anonymization...
The growing popularity of social networks and the increasing need for publishing related data mean t...
Many data analysis tasks rely on the abstraction of a graph to represent relations between entities,...
Social media datasets are fundamental to understanding a variety of phenomena, such as epidemics, ad...
As per recent progress, online social network (OSN) users have grown tremendously worldwide, especia...
The proliferation of online social networks, and the concomitant accumulation of user data, give ris...
Abstract- With the rapid growth of social networks, more researchers found that it is a great opport...
Perceptive information about users of the social networks should be protected. The confront is to pl...
Abstract. Enabling accurate analysis of social network data while preserving differential privacy ha...
Data privacy in social networks is a growing concern that threatens to limit access to important inf...
Abstract—Privacy is one of the major concerns when publishing or sharing social network data for soc...
Nowadays, more and more people join social networks, such as Facebook, Linkedin, and Livespace, to s...
Motivated by growing concerns over ensuring privacy on social networks, we develop new algorithms an...
Motivated by a real life problem of sharing social network data that contain sensitive personal info...
The third-party enterprises, such as sociologists and commercial companies, are mining data publishe...
Following the trend of preserving privacy in online-social-network publishing, various anonymization...
The growing popularity of social networks and the increasing need for publishing related data mean t...
Many data analysis tasks rely on the abstraction of a graph to represent relations between entities,...
Social media datasets are fundamental to understanding a variety of phenomena, such as epidemics, ad...
As per recent progress, online social network (OSN) users have grown tremendously worldwide, especia...
The proliferation of online social networks, and the concomitant accumulation of user data, give ris...
Abstract- With the rapid growth of social networks, more researchers found that it is a great opport...
Perceptive information about users of the social networks should be protected. The confront is to pl...