We present a generic and automated approach to re-identifying nodes in anonymized social networks which enables novel anonymization techniques to be quickly evaluated. It uses machine learning (decision forests) to matching pairs of nodes in disparate anonymized sub-graphs. The technique uncovers artefacts and in-variants of any black-box anonymization scheme from a small set of examples. Despite a high degree of automation, classification succeeds with significant true positive rates even when small false positive rates are sought. Our evaluation uses publicly available real world datasets to study the performance of our approach against real-world anonymization strategies, namely the schemes used to protect datasets of The Data for Develo...
The proliferation of social networks as a means of seamless communication between multiple parties a...
Graph de-anonymization is a technique used to reveal connections between entities in anonymized grap...
In order to protect privacy of social network participants, network graph data should be anonymised ...
We present a generic and automated approach to re-identifying nodes in anonymized social networks wh...
Releasing anonymized social network data for analysis has been a popular idea among data providers. ...
Social graphs derived from online social interactions contain a wealth of information that is nowada...
Abstract-Digital traces left by users of online social networking services, even after anonymization...
Social media datasets are fundamental to understanding a variety of phenomena, such as epidemics, ad...
We address the problem of social network de-anonymization when relationships between people are desc...
Online social network providers have become treasure troves of in-formation for marketers and resear...
Abstract—Privacy is one of the major concerns when publishing or sharing social network data for soc...
Social network providers anonymize graphs storing users' relationships to protect users from being r...
A range of privacy models as well as anonymization algorithms have been developed. In tabular micro ...
Abstract- With the rapid growth of social networks, more researchers found that it is a great opport...
Privacy is one of the major concerns when publishing or sharing social network data for social scien...
The proliferation of social networks as a means of seamless communication between multiple parties a...
Graph de-anonymization is a technique used to reveal connections between entities in anonymized grap...
In order to protect privacy of social network participants, network graph data should be anonymised ...
We present a generic and automated approach to re-identifying nodes in anonymized social networks wh...
Releasing anonymized social network data for analysis has been a popular idea among data providers. ...
Social graphs derived from online social interactions contain a wealth of information that is nowada...
Abstract-Digital traces left by users of online social networking services, even after anonymization...
Social media datasets are fundamental to understanding a variety of phenomena, such as epidemics, ad...
We address the problem of social network de-anonymization when relationships between people are desc...
Online social network providers have become treasure troves of in-formation for marketers and resear...
Abstract—Privacy is one of the major concerns when publishing or sharing social network data for soc...
Social network providers anonymize graphs storing users' relationships to protect users from being r...
A range of privacy models as well as anonymization algorithms have been developed. In tabular micro ...
Abstract- With the rapid growth of social networks, more researchers found that it is a great opport...
Privacy is one of the major concerns when publishing or sharing social network data for social scien...
The proliferation of social networks as a means of seamless communication between multiple parties a...
Graph de-anonymization is a technique used to reveal connections between entities in anonymized grap...
In order to protect privacy of social network participants, network graph data should be anonymised ...