Inferring private information using social network data
On-line social networks, such as Facebook, are increasingly
utilized by many users. These networks allow people to publish
details about themselves and connect to their friends.
Some of the information revealed inside these networks is
private and it is possible that corporations could use learning
algorithms on the released data to predict undisclosed
private information. In this paper, we explore how to launch
inference attacks using released social networking data to
predict undisclosed private information about individuals.
We then explore the effectiveness of possible sanitization
techniques that can be used to combat such inference attacks
under different scenarios.
Date: April 21, 2009
Book Title: World Wide Web Conference
Type: InProceedings
Address: Madrid
Bibtex
@InProceedings{Inferring_private_information_using_soci,
author = "J. Lindamood and R. Heatherly and Murat Kantarcioglu and Xiaohu Li",
title = "{Inferring private information using social network data}",
month = "April",
year = "2009",
address = ", Madrid, ",
booktitle = "World Wide Web Conference",
}