DocumentCode
3637386
Title
Approximation and Randomization for Quantitative Information-Flow Analysis
Author
Boris Köpf;Andrey Rybalchenko
Author_Institution
TUM, Germany
fYear
2010
Firstpage
3
Lastpage
14
Abstract
Quantitative information-flow analysis (QIF) is an emerging technique for establishing information-theoretic confidentiality properties. Automation of QIF is an important step towards ensuring its practical applicability, since manual reasoning about program security has been shown to be a tedious and expensive task. Existing automated techniques for QIF fall short of providing full coverage of all program executions, especially in the presence of unbounded loops and data structures, which are notoriously difficult to analyze automatically. In this paper we propose a blend of approximation and randomization techniques to bear on the challenge of sufficiently precise, yet efficient computation of quantitative information flow properties. Our approach relies on a sampling method to enumerate large or unbounded secret spaces, and applies both static and dynamic program analysis techniques to deliver necessary over- and under-approximations of information-theoretic characteristics.
Keywords
"Approximation methods","Entropy","Uncertainty","Security","Data structures","Random variables","Automation"
Publisher
ieee
Conference_Titel
Computer Security Foundations Symposium (CSF), 2010 23rd IEEE
ISSN
1063-6900
Print_ISBN
978-1-4244-7510-0
Type
conf
DOI
10.1109/CSF.2010.8
Filename
5552658
Link To Document