DocumentCode
160753
Title
Graph Anonymization Using Machine Learning
Author
Maag, Maria Laura ; Denoyer, Ludovic ; Gallinari, Patrick
Author_Institution
Alcatel-Lucent Bell Labs., Villarceaux, France
fYear
2014
fDate
13-16 May 2014
Firstpage
1111
Lastpage
1118
Abstract
Data privacy is a major problem that has to be considered before releasing datasets to the public or even to a partner company that would compute statistics or make a deep analysis of these data. This is insured by performing data anonymization as required by legislation. In this context, many different anonymization techniques have been proposed in the literature. These methods are usually specific to a particular de-anonymization procedure-or attack-one wants to avoid, and to a particular known set of characteristics that have to be preserved after the anonymization. They are difficult to use in a general context where attacks can be of different types, and where measures are not known to the anonymizer. The paper proposes a novel approach for automatically finding an anonymization procedure given a set of possible attacks and a set of measures to preserve. The approach is generic and based on machine learning techniques. It allows us to learn directly an anonymization function from a set of training data so as to optimize a trade off between privacy risk and utility loss. The algorithm thus allows one to get a good anonymization procedure for any kind of attacks, and any characteristic in a given set. Experiments made on two datasets show the effectiveness and the genericity of the approach.
Keywords
data privacy; graph theory; learning (artificial intelligence); risk management; data anonymization; data privacy; de-anonymization procedure; graph anonymization; machine learning; privacy risk; training data; utility loss; Context; Data privacy; Loss measurement; Machine learning algorithms; Noise; Privacy; Social network services; Graph Anonymization; Machine Learning; Privacy;
fLanguage
English
Publisher
ieee
Conference_Titel
Advanced Information Networking and Applications (AINA), 2014 IEEE 28th International Conference on
Conference_Location
Victoria, BC
ISSN
1550-445X
Print_ISBN
978-1-4799-3629-8
Type
conf
DOI
10.1109/AINA.2014.20
Filename
6838788
Link To Document