We tackle the problem of user de-anonymization in social networks characterized by scale-free relationships between users. The network is modeled as a graph capturing the impact of power-law node degree distribution, which is a fundamental and quite common feature of social networks. Using this model, we present a de-anonymization algorithm that exploits an initial set of users, called seeds, that are known a priori. By employing bootstrap percolation theory and a novel graph slicing technique, we develop a rigorous analysis of the proposed algorithm under asymptotic conditions. Our analysis shows that large inhomogeneities in the node degree lead to a dramatic reduction of the size of the seed set that is necessa...
This paper studies anonymity in a setting where individuals who communicate with each other over an ...
Releasing anonymized social network data for analysis has been a popular idea among data providers. ...
Abstract—Privacy is one of the major concerns when publishing or sharing social network data for soc...
We address the problem of social network de-anonymization when relationships between people are desc...
The proliferation of online social networks, and the concomitant accumulation of user data, give ris...
Social network data is widely shared, forwarded and published to third parties, which led to the ris...
Abstract—In this paper, we conduct the first comprehensive quantification on the perfect de-anonymiz...
Online social network providers have become treasure troves of in-formation for marketers and resear...
On-line social networks offer the opportunity to collect a huge amount of valuable information about...
International audienceReleasing connection data from social networking services can pose a significa...
Over the past decade, investigations in different fields have focused on studying and understanding ...
Abstract-Digital traces left by users of online social networking services, even after anonymization...
Abstract. With an abundance of social network data being released, the need to protect sensitive inf...
Social network: a social structure consists of nodes and ties. Noes are the individual actors within...
Social networks have an important and possibly key role in our society today. In addition to the ben...
This paper studies anonymity in a setting where individuals who communicate with each other over an ...
Releasing anonymized social network data for analysis has been a popular idea among data providers. ...
Abstract—Privacy is one of the major concerns when publishing or sharing social network data for soc...
We address the problem of social network de-anonymization when relationships between people are desc...
The proliferation of online social networks, and the concomitant accumulation of user data, give ris...
Social network data is widely shared, forwarded and published to third parties, which led to the ris...
Abstract—In this paper, we conduct the first comprehensive quantification on the perfect de-anonymiz...
Online social network providers have become treasure troves of in-formation for marketers and resear...
On-line social networks offer the opportunity to collect a huge amount of valuable information about...
International audienceReleasing connection data from social networking services can pose a significa...
Over the past decade, investigations in different fields have focused on studying and understanding ...
Abstract-Digital traces left by users of online social networking services, even after anonymization...
Abstract. With an abundance of social network data being released, the need to protect sensitive inf...
Social network: a social structure consists of nodes and ties. Noes are the individual actors within...
Social networks have an important and possibly key role in our society today. In addition to the ben...
This paper studies anonymity in a setting where individuals who communicate with each other over an ...
Releasing anonymized social network data for analysis has been a popular idea among data providers. ...
Abstract—Privacy is one of the major concerns when publishing or sharing social network data for soc...