Reward-Based Deception with Cognitive Bias
April 25, 2019 Β· Declared Dead Β· π IEEE Conference on Decision and Control
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Authors
Bo Wu, Murat Cubuktepe, Suda Bharadwaj, Ufuk Topcu
arXiv ID
1904.11454
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.LO,
math.OC
Citations
7
Venue
IEEE Conference on Decision and Control
Last Checked
4 months ago
Abstract
Deception plays a key role in adversarial or strategic interactions for the purpose of self-defence and survival. This paper introduces a general framework and solution to address deception. Most existing approaches for deception consider obfuscating crucial information to rational adversaries with abundant memory and computation resources. In this paper, we consider deceiving adversaries with bounded rationality and in terms of expected rewards. This problem is commonly encountered in many applications especially involving human adversaries. Leveraging the cognitive bias of humans in reward evaluation under stochastic outcomes, we introduce a framework to optimally assign resources of a limited quantity to optimally defend against human adversaries. Modeling such cognitive biases follows the so-called prospect theory from behavioral psychology literature. Then we formulate the resource allocation problem as a signomial program to minimize the defender's cost in an environment modeled as a Markov decision process. We use police patrol hour assignment as an illustrative example and provide detailed simulation results based on real-world data.
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