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The Ethereal
On the Compositionality of Quantitative Information Flow
November 02, 2016 ยท The Ethereal ยท ๐ Log. Methods Comput. Sci.
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Authors
Yusuke Kawamoto, Konstantinos Chatzikokolakis, Catuscia Palamidessi
arXiv ID
1611.00455
Category
cs.LO: Logic in CS
Cross-listed
cs.IT
Citations
14
Venue
Log. Methods Comput. Sci.
Last Checked
2 months ago
Abstract
Information flow is the branch of security that studies the leakage of information due to correlation between secrets and observables. Since in general such correlation cannot be avoided completely, it is important to quantify the leakage. The most followed approaches to defining appropriate measures are those based on information theory. In particular, one of the most successful approaches is the recently proposed $g$-leakage framework, which encompasses most of the information-theoretic ones. A problem with $g$-leakage, however, is that it is defined in terms of a minimization problem, which, in the case of large systems, can be computationally rather heavy. In this paper we study the case in which the channel associated to the system can be decomposed into simpler channels, which typically happens when the observables consist of multiple components. Our main contribution is the derivation of bounds on the (multiplicative version of) $g$-leakage of the whole system in terms of the $g$-leakages of its components. We also consider the particular cases of min-entropy leakage and of parallel channels, generalizing and systematizing results from the literature. We demonstrate the effectiveness of our method and evaluate the precision of our bounds using examples.
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