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Winning the Ransomware Lottery: A Game-Theoretic Model for Mitigating Ransomware Attacks (2107.14578v2)

Published 30 Jul 2021 in cs.CR, cs.CY, and cs.GT

Abstract: Ransomware is a growing threat to individuals and enterprises alike, constituting a major factor in cyber insurance and in the security planning of every organization. Although the game theoretic lens often frames the game as a competition between equals -- a profit maximizing attacker and a loss minimizing defender -- the reality of many situations is that ransomware organizations are not playing a non-cooperative game, they are playing a lottery. The wanton behavior of attackers creates a situation where many victims are hit more than once by ransomware operators, sometimes even by the same group. If defenders wish to combat malware, they must then seek to remove the incentives of it. In this work, we construct an expected value model based on data from actual ransomware attacks and identify three variables: the value of payments, the cost of an attack, and the probability of payment. Using this model, we consider the potential to manipulate these variables to reduce the profit motive associated with ransomware attack. Based on the model, we present mitigations to encourage an environment that is hostile to ransomware operators. In particular, we find that off-site backups and government incentives for their adoption are the most fruitful avenue for combating ransomware.

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