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ATAL
2015
Springer

To Handle, to Learn and to Manipulate the Attacker's (Uncertain) Payoffs in Security Games: Doctoral Consortium

8 years 29 days ago
To Handle, to Learn and to Manipulate the Attacker's (Uncertain) Payoffs in Security Games: Doctoral Consortium
Stackelberg security games (SSGs) are now established as a powerful tool in security domains. In order to compute the optimal strategy for the defender in SSG model, the defender needs to know the attacker’s preferences over targets so that she can predict how the attacker would react under a certain defender strategy. Uncertainty over attacker preferences may cause the defender to suffer large losses. My thesis focuses on uncertainty in attacker preferences: such uncertainty may arise because of uncertainty over attacker’s risk attitude or uncertainty over true attacker payoffs. To that end, the first part of my thesis focuses on risk-averse attackers. Extensive studies show that the attackers in some domains are in fact risk-averse rather than risk-neutral, which has never been taken into account in previous security game literatures. To handle the attacker’s risk aversion attitude in viewing payoffs, I develop an algorithm to compute the defender’s robust strategy again...
Yundi Qian
Added 16 Apr 2016
Updated 16 Apr 2016
Type Journal
Year 2015
Where ATAL
Authors Yundi Qian
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