International audienceReleasing connection data from social networking services can pose a significant threat to user privacy. In our work, we consider structural social network de-anonymization attacks , which are used when a malicious party uses connections in a public or other identified network to re-identify users in an anonymized social network release that he obtained previously.In this paper we design and evaluate a novel social de-anonymization attack. In particular, we argue that the similarity function used to re-identify nodes is a key component of such attacks, and we design a novel measure tailored for social networks. We incorporate this measure in an attack called Bumblebee. We evaluate Bumblebee in depth, and show that it s...
The proliferation of online social networks, and the concomitant accumulation of user data, give ris...
We address the problem of social network de-anonymization when relationships between people are desc...
Abstract — Recently, as more and more social network data has been published in one way or another, ...
Social networks have an important and possibly key role in our society today. In addition to the ben...
We identify privacy risks associated with releasing network data sets and provide an algorithm that ...
We identify privacy risks associated with releasing network data sets and provide an algorithm that ...
Releasing anonymized social network data for analysis has been a popular idea among data providers. ...
Advances in technology have made it possible to collect data about individuals and the connections b...
When people utilize social applications and services, their privacy suffers potential serious threat...
Social media datasets are fundamental to understanding a variety of phenomena, such as epidemics, ad...
Abstract—Social networking sites such as Facebook, LinkedIn, and Xing have been reporting exponentia...
International audienceSocial network data analysis raises concerns about the privacy of related enti...
Abstract-Digital traces left by users of online social networking services, even after anonymization...
Abstract—In this paper, we conduct the first comprehensive quantification on the perfect de-anonymiz...
We tackle the problem of user de-anonymization in social networks characterized by scale-free ...
The proliferation of online social networks, and the concomitant accumulation of user data, give ris...
We address the problem of social network de-anonymization when relationships between people are desc...
Abstract — Recently, as more and more social network data has been published in one way or another, ...
Social networks have an important and possibly key role in our society today. In addition to the ben...
We identify privacy risks associated with releasing network data sets and provide an algorithm that ...
We identify privacy risks associated with releasing network data sets and provide an algorithm that ...
Releasing anonymized social network data for analysis has been a popular idea among data providers. ...
Advances in technology have made it possible to collect data about individuals and the connections b...
When people utilize social applications and services, their privacy suffers potential serious threat...
Social media datasets are fundamental to understanding a variety of phenomena, such as epidemics, ad...
Abstract—Social networking sites such as Facebook, LinkedIn, and Xing have been reporting exponentia...
International audienceSocial network data analysis raises concerns about the privacy of related enti...
Abstract-Digital traces left by users of online social networking services, even after anonymization...
Abstract—In this paper, we conduct the first comprehensive quantification on the perfect de-anonymiz...
We tackle the problem of user de-anonymization in social networks characterized by scale-free ...
The proliferation of online social networks, and the concomitant accumulation of user data, give ris...
We address the problem of social network de-anonymization when relationships between people are desc...
Abstract — Recently, as more and more social network data has been published in one way or another, ...