DocumentCode :
743411
Title :
Managing Your Private and Public Data: Bringing Down Inference Attacks Against Your Privacy
Author :
Salamatian, Salman ; Zhang, Amy ; du Pin Calmon, Flavio ; Bhamidipati, Sandilya ; Fawaz, Nadia ; Kveton, Branislav ; Oliveira, Pedro ; Taft, Nina
Author_Institution :
MIT, Cambridge,
Volume :
9
Issue :
7
fYear :
2015
Firstpage :
1240
Lastpage :
1255
Abstract :
We propose a practical methodology to protect a user´s private data, when he wishes to publicly release data that is correlated with his private data, to get some utility. Our approach relies on a general statistical inference framework that captures the privacy threat under inference attacks, given utility constraints. Under this framework, data is distorted before it is released, according to a probabilistic privacy mapping. This mapping is obtained by solving a convex optimization problem, which minimizes information leakage under a distortion constraint. We address practical challenges encountered when applying this theoretical framework to real world data. On one hand, the design of optimal privacy mappings requires knowledge of the prior distribution linking private data and data to be released, which is often unavailable in practice. On the other hand, the optimization may become untractable when data assumes values in large size alphabets, or is high dimensional. Our work makes three major contributions. First, we provide bounds on the impact of a mismatched prior on the privacy-utility tradeoff. Second, we show how to reduce the optimization size by introducing a quantization step, and how to generate privacy mappings under quantization. Third, we evaluate our method on two datasets, including a new dataset that we collected, showing correlations between political convictions and TV viewing habits. We demonstrate that good privacy properties can be achieved with limited distortion so as not to undermine the original purpose of the publicly released data, e.g., recommendations.
Keywords :
Data privacy; Databases; Distortion; Inference algorithms; Optimization; Privacy; Quantization (signal); Data Privacy; information theory; mutual information;
fLanguage :
English
Journal_Title :
Selected Topics in Signal Processing, IEEE Journal of
Publisher :
ieee
ISSN :
1932-4553
Type :
jour
DOI :
10.1109/JSTSP.2015.2442227
Filename :
7118663
Link To Document :
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