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Discriminating Traces with Time

Authors :
Tizpaz-Niari, Saeid
Cerny, Pavol
Chang, Bor-Yuh Evan
Sankaranarayanan, Sriram
Trivedi, Ashutosh
Publication Year :
2017

Abstract

What properties about the internals of a program explain the possible differences in its overall running time for different inputs? In this paper, we propose a formal framework for considering this question we dub trace-set discrimination. We show that even though the algorithmic problem of computing maximum likelihood discriminants is NP-hard, approaches based on integer linear programming (ILP) and decision tree learning can be useful in zeroing-in on the program internals. On a set of Java benchmarks, we find that compactly-represented decision trees scalably discriminate with high accuracy---more scalably than maximum likelihood discriminants and with comparable accuracy. We demonstrate on three larger case studies how decision-tree discriminants produced by our tool are useful for debugging timing side-channel vulnerabilities (i.e., where a malicious observer infers secrets simply from passively watching execution times) and availability vulnerabilities.<br />Comment: Published in TACAS 2017

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1702.07103
Document Type :
Working Paper