Computational Efficiency in Multivariate Adversarial Risk Analysis Models
Michael Macgregor Perry, Hadi El-Amine

TL;DR
This paper introduces a simulation-based algorithm that efficiently solves large and complex adversarial risk analysis models, enabling decision-making in scenarios with intelligent adversaries and expansive decision spaces.
Contribution
The paper develops a general computational algorithm for broad classes of ARA models, addressing the lack of existing scalable solutions.
Findings
Algorithm solves large ARA models quickly.
Accurately identifies true optimal solutions.
Applicable to any ARA model with large finite decision spaces.
Abstract
In this paper we address the computational feasibility of the class of decision theoretic models referred to as adversarial risk analyses (ARA). These are models where a decision must be made with consideration for how an intelligent adversary may behave and where the decision-making process of the adversary is unknown, and is elicited by analyzing the adversary's decision problem using priors on his utility function and beliefs. The motivation of this research was to develop a computational algorithm that can be applied across a broad range of ARA models; to the best of our knowledge, no such algorithm currently exists. Using a two-person sequential model, we incrementally increase the size of the model and develop a simulation-based approximation of the true optimum where an exact solution is computationally impractical. In particular, we begin with a relatively large decision space…
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Taxonomy
TopicsProbabilistic and Robust Engineering Design · Risk and Safety Analysis · Adversarial Robustness in Machine Learning
