Hardware Trojan Detection Game: A Prospect-Theoretic Approach
Walid Saad, Anibal Sanjab, Yunpeng Wang, Charles Kamhoua, Kevin Kwiat

TL;DR
This paper introduces a game-theoretic framework using prospect theory to analyze hardware Trojan detection strategies, accounting for irrational decision-making and uncertainty in IC security threats.
Contribution
It develops a novel prospect-theoretic game model for hardware Trojan detection, with algorithms converging to Nash equilibrium under uncertainty and risk.
Findings
PT-based analysis offers deeper insights into security outcomes.
The proposed algorithms effectively find equilibrium strategies.
Simulation shows PT impacts detection and attack strategies significantly.
Abstract
Outsourcing integrated circuit (IC) manufacturing to offshore foundries has grown exponentially in recent years. Given the critical role of ICs in the control and operation of vehicular systems and other modern engineering designs, such offshore outsourcing has led to serious security threats due to the potential of insertion of hardware trojans - malicious designs that, when activated, can lead to highly detrimental consequences. In this paper, a novel game-theoretic framework is proposed to analyze the interactions between a hardware manufacturer, acting as attacker, and an IC testing facility, acting as defender. The problem is formulated as a noncooperative game in which the attacker must decide on the type of trojan that it inserts while taking into account the detection penalty as well as the damage caused by the trojan. Meanwhile, the resource-constrained defender must decide on…
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Taxonomy
TopicsPhysical Unclonable Functions (PUFs) and Hardware Security · Adversarial Robustness in Machine Learning · Advanced Malware Detection Techniques
