On Insufficiently Informative Measurements in Bayesian Quickest Change Detection and Identification

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Ford, Jason J.
James, Jasmin
Molloy, Timothy L.

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Institute of Electrical and Electronics Engineers Inc.

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In this paper, we describe an undesirable weak practical super-martingale hallucination phenomenon that can emerge in the Bayesian quickest detection and identification problem. We establish that when measurements are insufficiently informative, a situation described by a relative entropy condition on measurement densities, the Bayesian quickest detection and identification solution can (undesirably) become increasingly confident that a change has occurred, even when it has not. Finally, we illustrate the phenomenon in simulation studies and the vision-based aircraft detection application which illustrates the optimal rule can be unsuitable in the sense of hallucinating a change that has not occurred.

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2024 IEEE 63rd Conference on Decision and Control, CDC 2024

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