Privacy is one of the major concerns when publishing or sharing social network data for social science research and business analysis. Recently, researchers have developed privacy models similar to k-anonymity to prevent node reidentification through structure information. However, even when these privacy models are enforced, an attacker may still be able to infer one's private information if a group of nodes largely share the same sensitive labels (i.e., attributes). In other words, the label-node relationship is not well protected by pure structure anonymization methods. Furthermore, existing approaches, which rely on edge editing or node clustering, may significantly alter key graph properties. In this paper, we define a k-degree-l-diver...
The popularity of online social media platforms pro-vides an unprecedented opportunity to study real...
The growing popularity of social networks and the increasing need for publishing related data mean t...
In order to protect privacy of social network participants, network graph data should be anonymised ...
Abstract-Privacy is one of the major concerns when publishing or sharing social network data for soc...
Abstract- With the rapid growth of social networks, more researchers found that it is a great opport...
A range of privacy models as well as anonymization algorithms have been developed. In tabular micro ...
The use of social network sites goes on increasing such as facebook, twitter, linkedin, live journal...
Abstract—Privacy is one of the major concerns when publishing or sharing social network data for soc...
Abstract: Publishing or sharing the social network data for social science research and business ana...
The use of social network sites goes on increasing day by day e.g. wiki vote, live journal social ne...
The use of social network sites goes on increasing day by day e.g. wiki vote, live journal social ne...
Devising methods to publish social network data in a form that affords utility without compromising ...
Interpersonal organization information give significant data to organizations to better comprehend t...
Abstract. With an abundance of social network data being released, the need to protect sensitive inf...
Releasing anonymized social network data for analysis has been a popular idea among data providers. ...
The popularity of online social media platforms pro-vides an unprecedented opportunity to study real...
The growing popularity of social networks and the increasing need for publishing related data mean t...
In order to protect privacy of social network participants, network graph data should be anonymised ...
Abstract-Privacy is one of the major concerns when publishing or sharing social network data for soc...
Abstract- With the rapid growth of social networks, more researchers found that it is a great opport...
A range of privacy models as well as anonymization algorithms have been developed. In tabular micro ...
The use of social network sites goes on increasing such as facebook, twitter, linkedin, live journal...
Abstract—Privacy is one of the major concerns when publishing or sharing social network data for soc...
Abstract: Publishing or sharing the social network data for social science research and business ana...
The use of social network sites goes on increasing day by day e.g. wiki vote, live journal social ne...
The use of social network sites goes on increasing day by day e.g. wiki vote, live journal social ne...
Devising methods to publish social network data in a form that affords utility without compromising ...
Interpersonal organization information give significant data to organizations to better comprehend t...
Abstract. With an abundance of social network data being released, the need to protect sensitive inf...
Releasing anonymized social network data for analysis has been a popular idea among data providers. ...
The popularity of online social media platforms pro-vides an unprecedented opportunity to study real...
The growing popularity of social networks and the increasing need for publishing related data mean t...
In order to protect privacy of social network participants, network graph data should be anonymised ...