DocumentCode
169429
Title
From the Information Bottleneck to the Privacy Funnel
Author
Makhdoumi, Ali ; Salamatian, Salman ; Fawaz, Nadia ; Medard, Muriel
Author_Institution
MIT, Cambridge, PA, USA
fYear
2014
fDate
2-5 Nov. 2014
Firstpage
501
Lastpage
505
Abstract
We focus on the privacy-utility trade-off encountered by users who wish to disclose some information to an analyst, that is correlated with their private data, in the hope of receiving some utility. We rely on a general privacy statistical inference framework, under which data is transformed before it is disclosed, according to a probabilistic privacy mapping. We show that when the log-loss is introduced in this framework in both the privacy metric and the distortion metric, the privacy leakage and the utility constraint can be reduced to the mutual information between private data and disclosed data, and between non-private data and disclosed data respectively. We justify the relevance and generality of the privacy metric under the log-loss by proving that the inference threat under any bounded cost function can be upperbounded by an explicit function of the mutual information between private data and disclosed data. We then show that the privacy-utility tradeoff under the log-loss can be cast as the non-convex Privacy Funnel optimization, and we leverage its connection to the Information Bottleneck, to provide a greedy algorithm that is locally optimal. We evaluate its performance on the US census dataset. Finally, we characterize the optimal privacy mapping for the Gaussian Privacy Funnel.
Keywords
data privacy; greedy algorithms; Gaussian privacy funnel; US census dataset; bounded cost function; disclosed data; greedy algorithm; information bottleneck; log-loss; nonconvex privacy funnel optimization; nonprivate data; optimal privacy mapping; privacy leakage; privacy metric; privacy-utility trade-off; privacy-utility tradeoff; probabilistic privacy mapping; utility constraint; Data privacy; Distortion measurement; Greedy algorithms; Mutual information; Optimization; Privacy;
fLanguage
English
Publisher
ieee
Conference_Titel
Information Theory Workshop (ITW), 2014 IEEE
Conference_Location
Hobart, TAS
ISSN
1662-9019
Type
conf
DOI
10.1109/ITW.2014.6970882
Filename
6970882
Link To Document