CRGTITMay 14, 2017

Information Leakage Games

arXiv:1705.05030v221 citations
Originality Highly original
AI Analysis

This work addresses information security by formally proving that optimal attack strategies can be probabilistic, which is novel in the information flow literature.

The paper tackles the problem of modeling attacker-defender interactions in information flow using a game-theoretic approach, showing that optimal strategies for both parties are often probabilistic and providing algorithms to compute Nash equilibria.

We consider a game-theoretic setting to model the interplay between attacker and defender in the context of information flow, and to reason about their optimal strategies. In contrast with standard game theory, in our games the utility of a mixed strategy is a convex function of the distribution on the defender's pure actions, rather than the expected value of their utilities. Nevertheless, the important properties of game theory, notably the existence of a Nash equilibrium, still hold for our (zero-sum) leakage games, and we provide algorithms to compute the corresponding optimal strategies. As typical in (simultaneous) game theory, the optimal strategy is usually mixed, i.e., probabilistic, for both the attacker and the defender. From the point of view of information flow, this was to be expected in the case of the defender, since it is well known that randomization at the level of the system design may help to reduce information leaks. Regarding the attacker, however, this seems the first work (w.r.t. the literature in information flow) proving formally that in certain cases the optimal attack strategy is necessarily probabilistic.

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