TY - GEN
T1 - Privometer
T2 - 2010 IEEE 26th International Conference on Data Engineering Workshops, ICDEW 2010
AU - Talukder, Nilothpal
AU - Ouzzani, Mourad
AU - Elmagarmid, Ahmed K.
AU - Elmeleegy, Hazem
AU - Yakout, Mohamed
PY - 2010
Y1 - 2010
N2 - The increasing popularity of social networks, such as Facebook and Orkut, has raised several privacy concerns. Traditional ways of safeguarding privacy of personal information by hiding sensitive attributes are no longer adequate. Research shows that probabilistic classification techniques can effectively infer such private information. The disclosed sensitive information of friends, group affiliations and even participation in activities, such as tagging and commenting, are considered background knowledge in this process. In this paper, we present a privacy protection tool, called Privometer, that measures the amount of sensitive information leakage in a user profile and suggests self-sanitization actions to regulate the amount of leakage. In contrast to previous research, where inference techniques use publicly available profile information, we consider an augmented model where a potentially malicious application installed in the user's friend profiles can access substantially more information. In our model, merely hiding the sensitive information is not sufficient to protect the user privacy. We present an implementation of Privometer in Facebook.
AB - The increasing popularity of social networks, such as Facebook and Orkut, has raised several privacy concerns. Traditional ways of safeguarding privacy of personal information by hiding sensitive attributes are no longer adequate. Research shows that probabilistic classification techniques can effectively infer such private information. The disclosed sensitive information of friends, group affiliations and even participation in activities, such as tagging and commenting, are considered background knowledge in this process. In this paper, we present a privacy protection tool, called Privometer, that measures the amount of sensitive information leakage in a user profile and suggests self-sanitization actions to regulate the amount of leakage. In contrast to previous research, where inference techniques use publicly available profile information, we consider an augmented model where a potentially malicious application installed in the user's friend profiles can access substantially more information. In our model, merely hiding the sensitive information is not sufficient to protect the user privacy. We present an implementation of Privometer in Facebook.
UR - https://www.scopus.com/pages/publications/77952665888
U2 - 10.1109/ICDEW.2010.5452715
DO - 10.1109/ICDEW.2010.5452715
M3 - Conference contribution
AN - SCOPUS:77952665888
SN - 9781424465217
T3 - Proceedings - International Conference on Data Engineering
SP - 266
EP - 269
BT - ICDE Workshops 2010 - The 2010 IEEE 26th International Conference on Data Engineering Workshops
Y2 - 1 March 2010 through 6 March 2010
ER -