
TL;DR
This paper introduces a rigorous framework for deception in optimal control, modeling how an agent can manipulate an adversary's beliefs to achieve its goals, with applications in scenarios like pursuit and camouflage.
Contribution
It develops a mathematically rigorous framework for deception in optimal control, incorporating belief-dependent rewards and strategies under uncertainty.
Findings
Framework for deception using belief-induced rewards
Reduction to control problems in partially observable MDPs
Examples demonstrating effective deceptive strategies
Abstract
In this paper, we consider an adversarial scenario where one agent seeks to achieve an objective and its adversary seeks to learn the agent's intentions and prevent the agent from achieving its objective. The agent has an incentive to try to deceive the adversary about its intentions, while at the same time working to achieve its objective. The primary contribution of this paper is to introduce a mathematically rigorous framework for the notion of deception within the context of optimal control. The central notion introduced in the paper is that of a belief-induced reward: a reward dependent not only on the agent's state and action, but also adversary's beliefs. Design of an optimal deceptive strategy then becomes a question of optimal control design on the product of the agent's state space and the adversary's belief space. The proposed framework allows for deception to be defined in…
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