A Survey: Deriving Private Information from Perturbed Data
Citation
Okkalioglu, B. D., Okkalioglu, M., Koc, M., & Polat, H. (2015). A survey: deriving private information from perturbed data. Artificial Intelligence Review, 44(4), 547-569.Abstract
Privacy-preserving data mining has attracted the attention of a large number of
researchers.Many data perturbation methods have been proposed to ensure individual privacy.
Such methods seem to be successful in providing privacy and accuracy. On one hand, different
methods are utilized to preserve privacy. On the other hand, various data reconstruction
approaches have been proposed to derive private information from perturbed data. Thus,
many researchers have been conducting various studies about data reconstruction methods
and the resilience of data perturbation schemes. In this survey, we focus on data reconstruction
methods due to their importance in privacy-preserving data mining. We provide a detailed
review of the data reconstruction methods and the data perturbation schemes attacked by
different data reconstruction techniques. We merge our review with the evaluation metrics
and the data sets used in current attack techniques. Finally, we pose some open questions to
provide a better understanding of these approaches and to guide future study