A Clustering Approach for Data and Structural Anonymity in Social Networks (2008)
| Venue: | In Privacy, Security, and Trust in KDD Workshop (PinKDD |
| Citations: | 28 - 3 self |
BibTeX
@INPROCEEDINGS{Campan08aclustering,
author = {Alina Campan and Traian Marius Truta},
title = {A Clustering Approach for Data and Structural Anonymity in Social Networks},
booktitle = {In Privacy, Security, and Trust in KDD Workshop (PinKDD},
year = {2008}
}
OpenURL
Abstract
The advent of social network sites in the last few years seems to be a trend that will likely continue in the years to come. Online social interaction has become very popular around the globe and most sociologists agree that this will not fade away. Such a development is possible due to the advancements in computer power, technologies, and the spread of the World Wide Web. What many naïve technology users may not always realize is that the information they provide online is stored in massive data repositories and may be used for various purposes. Researchers have pointed out for some time the privacy implications of massive data gathering, and a lot of effort has been made to protect the data from unauthorized disclosure. However, most of the data privacy research has been focused on more traditional data models such as microdata (data stored as one relational table, where each row represents an individual entity). More recently, social network data has begun to be analyzed from a different, specific privacy perspective. Since the individual entities in social networks, besides the attribute values that characterize them, also have relationships with other entities, the possibility of privacy breaches increases. Our main contributions in this paper are the development of a greedy privacy algorithm for anonymizing a social network and the introduction of a structural information loss measure that quantifies the amount of information lost due to edge generalization in the anonymization process.







